Determinant
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In mathematics, the determinant is a scalar value that is a
function Function or functionality may refer to: Computing * Function key, a type of key on computer keyboards * Function model, a structured representation of processes in a system * Function object or functor or functionoid, a concept of object-oriente ...
of the entries of a square matrix. It characterizes some properties of the matrix and the linear map represented by the matrix. In particular, the determinant is nonzero if and only if the matrix is
invertible In mathematics, the concept of an inverse element generalises the concepts of opposite () and reciprocal () of numbers. Given an operation denoted here , and an identity element denoted , if , one says that is a left inverse of , and that is ...
and the linear map represented by the matrix is an
isomorphism In mathematics, an isomorphism is a structure-preserving mapping between two structures of the same type that can be reversed by an inverse mapping. Two mathematical structures are isomorphic if an isomorphism exists between them. The word i ...
. The determinant of a product of matrices is the product of their determinants (the preceding property is a corollary of this one). The determinant of a matrix is denoted , , or . The determinant of a matrix is :\begin a & b\\c & d \end=ad-bc, and the determinant of a matrix is : \begin a & b & c \\ d & e & f \\ g & h & i \end= aei + bfg + cdh - ceg - bdi - afh. The determinant of a matrix can be defined in several equivalent ways. Leibniz formula expresses the determinant as a sum of signed products of matrix entries such that each summand is the product of different entries, and the number of these summands is n!, the factorial of (the product of the first positive integers). The
Laplace expansion In linear algebra, the Laplace expansion, named after Pierre-Simon Laplace, also called cofactor expansion, is an expression of the determinant of an matrix as a weighted sum of minors, which are the determinants of some submatrices of . Spec ...
expresses the determinant of a matrix as a linear combination of determinants of (n-1)\times(n-1) submatrices. Gaussian elimination express the determinant as the product of the diagonal entries of a
diagonal matrix In linear algebra, a diagonal matrix is a matrix in which the entries outside the main diagonal are all zero; the term usually refers to square matrices. Elements of the main diagonal can either be zero or nonzero. An example of a 2×2 diagonal m ...
that is obtained by a succession of
elementary row operation In mathematics, an elementary matrix is a matrix which differs from the identity matrix by one single elementary row operation. The elementary matrices generate the general linear group GL''n''(F) when F is a field. Left multiplication (pre-multipl ...
s. Determinants can also be defined by some of their properties: the determinant is the unique function defined on the matrices that has the four following properties. The determinant of the identity matrix is ; the exchange of two rows (or of two columns) multiplies the determinant by ; multiplying a row (or a column) by a number multiplies the determinant by this number; and adding to a row (or a column) a multiple of another row (or column) does not change the determinant. Determinants occur throughout mathematics. For example, a matrix is often used to represent the coefficients in a system of linear equations, and determinants can be used to solve these equations ( Cramer's rule), although other methods of solution are computationally much more efficient. Determinants are used for defining the characteristic polynomial of a matrix, whose roots are the
eigenvalue In linear algebra, an eigenvector () or characteristic vector of a linear transformation is a nonzero vector that changes at most by a scalar factor when that linear transformation is applied to it. The corresponding eigenvalue, often denoted ...
s. In
geometry Geometry (; ) is, with arithmetic, one of the oldest branches of mathematics. It is concerned with properties of space such as the distance, shape, size, and relative position of figures. A mathematician who works in the field of geometry is ...
, the signed -dimensional
volume Volume is a measure of occupied three-dimensional space. It is often quantified numerically using SI derived units (such as the cubic metre and litre) or by various imperial or US customary units (such as the gallon, quart, cubic inch). Th ...
of a -dimensional parallelepiped is expressed by a determinant. This is used in
calculus Calculus, originally called infinitesimal calculus or "the calculus of infinitesimals", is the mathematical study of continuous change, in the same way that geometry is the study of shape, and algebra is the study of generalizations of arithm ...
with exterior differential forms and the
Jacobian determinant In vector calculus, the Jacobian matrix (, ) of a vector-valued function of several variables is the matrix of all its first-order partial derivatives. When this matrix is square, that is, when the function takes the same number of variables ...
, in particular for changes of variables in
multiple integral In mathematics (specifically multivariable calculus), a multiple integral is a definite integral of a function of several real variables, for instance, or . Integrals of a function of two variables over a region in \mathbb^2 (the real-number ...
s.


2 × 2 matrices

The determinant of a matrix \begin a & b \\c & d \end is denoted either by "" or by vertical bars around the matrix, and is defined as :\det \begin a & b \\c & d \end = \begin a & b \\c & d \end = ad - bc. For example, :\det \begin 3 & 7 \\1 & -4 \end = \begin 3 & 7 \\ 1 & \end = 3 \cdot (-4) - 7 \cdot 1 = -19.


First properties

The determinant has several key properties that can be proved by direct evaluation of the definition for 2 \times 2-matrices, and that continue to hold for determinants of larger matrices. They are as follows: first, the determinant of the identity matrix \begin1 & 0 \\ 0 & 1 \end is 1. Second, the determinant is zero if two rows are the same: :\begin a & b \\ a & b \end = ab - ba = 0. This holds similarly if the two columns are the same. Moreover, :\begina & b + b' \\ c & d + d' \end = a(d+d')-(b+b')c = \begina & b\\ c & d \end + \begina & b' \\ c & d' \end. Finally, if any column is multiplied by some number r (i.e., all entries in that column are multiplied by that number), the determinant is also multiplied by that number: :\begin r \cdot a & b \\ r \cdot c & d \end = rad - brc = r(ad-bc) = r \cdot \begin a & b \\c & d \end.


Geometric meaning

If the matrix entries are real numbers, the matrix can be used to represent two linear maps: one that maps the standard basis vectors to the rows of , and one that maps them to the columns of . In either case, the images of the basis vectors form a parallelogram that represents the image of the
unit square In mathematics, a unit square is a square whose sides have length . Often, ''the'' unit square refers specifically to the square in the Cartesian plane with corners at the four points ), , , and . Cartesian coordinates In a Cartesian coordin ...
under the mapping. The parallelogram defined by the rows of the above matrix is the one with vertices at , , , and , as shown in the accompanying diagram. The absolute value of is the area of the parallelogram, and thus represents the scale factor by which areas are transformed by . (The parallelogram formed by the columns of is in general a different parallelogram, but since the determinant is symmetric with respect to rows and columns, the area will be the same.) The absolute value of the determinant together with the sign becomes the ''oriented area'' of the parallelogram. The oriented area is the same as the usual
area Area is the quantity that expresses the extent of a region on the plane or on a curved surface. The area of a plane region or ''plane area'' refers to the area of a shape or planar lamina, while '' surface area'' refers to the area of an ope ...
, except that it is negative when the angle from the first to the second vector defining the parallelogram turns in a clockwise direction (which is opposite to the direction one would get for the identity matrix). To show that is the signed area, one may consider a matrix containing two vectors and representing the parallelogram's sides. The signed area can be expressed as for the angle ''θ'' between the vectors, which is simply base times height, the length of one vector times the perpendicular component of the other. Due to the sine this already is the signed area, yet it may be expressed more conveniently using the cosine of the complementary angle to a perpendicular vector, e.g. , so that , which can be determined by the pattern of the
scalar product In mathematics, the dot product or scalar productThe term ''scalar product'' means literally "product with a scalar as a result". It is also used sometimes for other symmetric bilinear forms, for example in a pseudo-Euclidean space. is an alge ...
to be equal to : : \text = , \boldsymbol, \,, \boldsymbol, \,\sin\,\theta = \left, \boldsymbol^\perp\\,\left, \boldsymbol\\,\cos\,\theta' = \begin -b \\ a \end \cdot \begin c \\ d \end = ad - bc. Thus the determinant gives the scaling factor and the orientation induced by the mapping represented by ''A''. When the determinant is equal to one, the linear mapping defined by the matrix is equi-areal and orientation-preserving. The object known as the ''
bivector In mathematics, a bivector or 2-vector is a quantity in exterior algebra or geometric algebra that extends the idea of scalars and vectors. If a scalar is considered a degree-zero quantity, and a vector is a degree-one quantity, then a bivector ca ...
'' is related to these ideas. In 2D, it can be interpreted as an ''oriented plane segment'' formed by imagining two vectors each with origin , and coordinates and . The bivector magnitude (denoted by ) is the ''signed area'', which is also the determinant . If an
real Real may refer to: Currencies * Brazilian real (R$) * Central American Republic real * Mexican real * Portuguese real * Spanish real * Spanish colonial real Music Albums * ''Real'' (L'Arc-en-Ciel album) (2000) * ''Real'' (Bright album) (2010) ...
matrix ''A'' is written in terms of its column vectors A = \left begin \mathbf_1 & \mathbf_2 & \cdots & \mathbf_n\end\right/math>, then : A\begin1 \\ 0\\ \vdots \\0\end = \mathbf_1, \quad A\begin0 \\ 1\\ \vdots \\0\end = \mathbf_2, \quad \ldots, \quad A\begin0 \\0 \\ \vdots \\1\end = \mathbf_n. This means that A maps the unit ''n''-cube to the ''n''-dimensional parallelotope defined by the vectors \mathbf_1, \mathbf_2, \ldots, \mathbf_n, the region P = \left\. The determinant gives the signed ''n''-dimensional volume of this parallelotope, \det(A) = \pm \text(P), and hence describes more generally the ''n''-dimensional volume scaling factor of the
linear transformation In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that pre ...
produced by ''A''. (The sign shows whether the transformation preserves or reverses orientation.) In particular, if the determinant is zero, then this parallelotope has volume zero and is not fully ''n''-dimensional, which indicates that the dimension of the image of ''A'' is less than ''n''. This
means Means may refer to: * Means LLC, an anti-capitalist media worker cooperative * Means (band), a Christian hardcore band from Regina, Saskatchewan * Means, Kentucky, a town in the US * Means (surname) * Means Johnston Jr. (1916–1989), US Navy adm ...
that ''A'' produces a linear transformation which is neither onto nor one-to-one, and so is not invertible.


Definition

In the sequel, ''A'' is a square matrix with ''n'' rows and ''n'' columns, so that it can be written as :A = \begin a_ & a_ & \cdots & a_ \\ a_ & a_ & \cdots & a_ \\ \vdots & \vdots & \ddots & \vdots \\ a_ & a_ & \cdots & a_ \end. The entries a_ etc. are, for many purposes, real or complex numbers. As discussed below, the determinant is also defined for matrices whose entries are in a commutative ring. The determinant of ''A'' is denoted by det(''A''), or it can be denoted directly in terms of the matrix entries by writing enclosing bars instead of brackets: :\begin a_ & a_ & \cdots & a_ \\ a_ & a_ & \cdots & a_ \\ \vdots & \vdots & \ddots & \vdots \\ a_ & a_ & \cdots & a_ \end. There are various equivalent ways to define the determinant of a square matrix ''A'', i.e. one with the same number of rows and columns: the determinant can be defined via the Leibniz formula, an explicit formula involving sums of products of certain entries of the matrix. The determinant can also be characterized as the unique function depending on the entries of the matrix satisfying certain properties. This approach can also be used to compute determinants by simplifying the matrices in question.


Leibniz formula


3 × 3 matrices

The ''Leibniz formula'' for the determinant of a matrix is the following: :\begin \begina&b&c\\d&e&f\\g&h&i\end &= a(ei - fh) - b(di - fg) + c(dh - eg) \\ &= aei + bfg + cdh - ceg - bdi - afh. \end The
rule of Sarrus In linear algebra, the Rule of Sarrus is a mnemonic device for computing the determinant of a 3 \times 3 matrix named after the French mathematician Pierre Frédéric Sarrus Pierre Frédéric Sarrus (; 10 March 1798, Saint-Affrique – 20 No ...
is a mnemonic for the expanded form of this determinant: the sum of the products of three diagonal north-west to south-east lines of matrix elements, minus the sum of the products of three diagonal south-west to north-east lines of elements, when the copies of the first two columns of the matrix are written beside it as in the illustration. This scheme for calculating the determinant of a matrix does not carry over into higher dimensions.


''n'' × ''n'' matrices

In higher dimension, the Leibniz formula expresses the determinant of an n \times n-matrix as an expression involving permutations and their ''
signatures A signature (; from la, signare, "to sign") is a handwritten (and often stylized) depiction of someone's name, nickname, or even a simple "X" or other mark that a person writes on documents as a proof of identity and intent. The writer of a ...
''. A permutation of the set \ is a
function Function or functionality may refer to: Computing * Function key, a type of key on computer keyboards * Function model, a structured representation of processes in a system * Function object or functor or functionoid, a concept of object-oriente ...
\sigma that reorders this set of integers. The value in the i-th position after the reordering \sigma is denoted below by \sigma_i. The set of all such permutations, called the
symmetric group In abstract algebra, the symmetric group defined over any set is the group whose elements are all the bijections from the set to itself, and whose group operation is the composition of functions. In particular, the finite symmetric group ...
, is commonly denoted S_n. The signature \sgn(\sigma) of a permutation \sigma is +1, if the permutation can be obtained with an even number of exchanges of two entries; otherwise, it is -1. Given a matrix :A=\begin a_\ldots a_\\ \vdots\qquad\vdots\\ a_\ldots a_ \end, the Leibniz formula for its determinant is, using sigma notation, :\det(A)=\begin a_\ldots a_\\ \vdots\qquad\vdots\\ a_\ldots a_ \end = \sum_\sgn(\sigma)a_\cdots a_. Using
pi notation Multiplication (often denoted by the cross symbol , by the mid-line dot operator , by juxtaposition, or, on computers, by an asterisk ) is one of the four elementary mathematical operations of arithmetic, with the other ones being addit ...
, this can be shortened into :\det(A) = \sum_ \left( \sgn(\sigma) \prod_^n a_\right). The
Levi-Civita symbol In mathematics, particularly in linear algebra, tensor analysis, and differential geometry, the Levi-Civita symbol or Levi-Civita epsilon represents a collection of numbers; defined from the parity of a permutation, sign of a permutation of the n ...
\varepsilon_ is defined on the -
tuple In mathematics, a tuple is a finite ordered list (sequence) of elements. An -tuple is a sequence (or ordered list) of elements, where is a non-negative integer. There is only one 0-tuple, referred to as ''the empty tuple''. An -tuple is defi ...
s of integers in \ as if two of the integers are equal, and, otherwise, as the signature of the permutation defined by the tuple of integers. With the Levi-Civita symbol, Leibniz formula may be written as :\det(A) = \sum_ \varepsilon_ a_ \cdots a_, where the sum is taken over all -tuples of integers in \.


Properties of the determinant


Characterization of the determinant

The determinant can be characterized by the following three key properties. To state these, it is convenient to regard an n \times n-matrix ''A'' as being composed of its n columns, so denoted as :A = \big ( a_1, \dots, a_n \big ), where the
column vector In linear algebra, a column vector with m elements is an m \times 1 matrix consisting of a single column of m entries, for example, \boldsymbol = \begin x_1 \\ x_2 \\ \vdots \\ x_m \end. Similarly, a row vector is a 1 \times n matrix for some n, c ...
a_i (for each ''i'') is composed of the entries of the matrix in the ''i''-th column. #
  • \det\left(I\right) = 1, where I is an identity matrix. #
  • The determinant is '' multilinear'': if the ''j''th column of a matrix A is written as a linear combination a_j = r \cdot v + w of two
    column vector In linear algebra, a column vector with m elements is an m \times 1 matrix consisting of a single column of m entries, for example, \boldsymbol = \begin x_1 \\ x_2 \\ \vdots \\ x_m \end. Similarly, a row vector is a 1 \times n matrix for some n, c ...
    s ''v'' and ''w'' and a number ''r'', then the determinant of ''A'' is expressible as a similar linear combination: #: \begin, A, &= \big , a_1, \dots, a_, r \cdot v + w, a_, \dots, a_n , \\ &= r \cdot , a_1, \dots, v, \dots a_n , + , a_1, \dots, w, \dots, a_n , \end #
  • The determinant is '' alternating'': whenever two columns of a matrix are identical, its determinant is 0: #: , a_1, \dots, v, \dots, v, \dots, a_n, = 0. If the determinant is defined using the Leibniz formula as above, these three properties can be proved by direct inspection of that formula. Some authors also approach the determinant directly using these three properties: it can be shown that there is exactly one function that assigns to any n \times n-matrix ''A'' a number that satisfies these three properties. This also shows that this more abstract approach to the determinant yields the same definition as the one using the Leibniz formula. To see this it suffices to expand the determinant by multi-linearity in the columns into a (huge) linear combination of determinants of matrices in which each column is a standard basis vector. These determinants are either 0 (by property 9) or else ±1 (by properties 1 and 12 below), so the linear combination gives the expression above in terms of the Levi-Civita symbol. While less technical in appearance, this characterization cannot entirely replace the Leibniz formula in defining the determinant, since without it the existence of an appropriate function is not clear.


    Immediate consequences

    These rules have several further consequences: * The determinant is a homogeneous function, i.e., \det(cA) = c^n\det(A) (for an n \times n matrix A). * Interchanging any pair of columns of a matrix multiplies its determinant by −1. This follows from the determinant being multilinear and alternating (properties 2 and 3 above): , a_1, \dots, a_j, \dots a_i, \dots, a_n, = - , a_1, \dots, a_i, \dots, a_j, \dots, a_n, . This formula can be applied iteratively when several columns are swapped. For example , a_3, a_1, a_2, a_4 \dots, a_n, = - , a_1, a_3, a_2, a_4, \dots, a_n, = , a_1, a_2, a_3, a_4, \dots, a_n, . Yet more generally, any permutation of the columns multiplies the determinant by the sign of the permutation. * If some column can be expressed as a linear combination of the ''other'' columns (i.e. the columns of the matrix form a
    linearly dependent In the theory of vector spaces, a set of vectors is said to be if there is a nontrivial linear combination of the vectors that equals the zero vector. If no such linear combination exists, then the vectors are said to be . These concepts are ...
    set), the determinant is 0. As a special case, this includes: if some column is such that all its entries are zero, then the determinant of that matrix is 0. * Adding a scalar multiple of one column to ''another'' column does not change the value of the determinant. This is a consequence of multilinearity and being alternative: by multilinearity the determinant changes by a multiple of the determinant of a matrix with two equal columns, which determinant is 0, since the determinant is alternating. * If A is a
    triangular matrix In mathematics, a triangular matrix is a special kind of square matrix. A square matrix is called if all the entries ''above'' the main diagonal are zero. Similarly, a square matrix is called if all the entries ''below'' the main diagonal are ...
    , i.e. a_=0, whenever i>j or, alternatively, whenever i, then its determinant equals the product of the diagonal entries: \det(A) = a_ a_ \cdots a_ = \prod_^n a_. Indeed, such a matrix can be reduced, by appropriately adding multiples of the columns with fewer nonzero entries to those with more entries, to a
    diagonal matrix In linear algebra, a diagonal matrix is a matrix in which the entries outside the main diagonal are all zero; the term usually refers to square matrices. Elements of the main diagonal can either be zero or nonzero. An example of a 2×2 diagonal m ...
    (without changing the determinant). For such a matrix, using the linearity in each column reduces to the identity matrix, in which case the stated formula holds by the very first characterizing property of determinants. Alternatively, this formula can also be deduced from the Leibniz formula, since the only permutation \sigma which gives a non-zero contribution is the identity permutation.


    Example

    These characterizing properties and their consequences listed above are both theoretically significant, but can also be used to compute determinants for concrete matrices. In fact, Gaussian elimination can be applied to bring any matrix into upper triangular form, and the steps in this algorithm affect the determinant in a controlled way. The following concrete example illustrates the computation of the determinant of the matrix A using that method: :A = \begin -2 & -1 & 2 \\ 2 & 1 & 4 \\ -3 & 3 & -1 \end. Combining these equalities gives , A, = -, E, = -(18 \cdot 3 \cdot (-1)) = 54.


    Transpose

    The determinant of the
    transpose In linear algebra, the transpose of a matrix is an operator which flips a matrix over its diagonal; that is, it switches the row and column indices of the matrix by producing another matrix, often denoted by (among other notations). The tr ...
    of A equals the determinant of ''A'': :\det\left(A^\textsf\right) = \det(A). This can be proven by inspecting the Leibniz formula. This implies that in all the properties mentioned above, the word "column" can be replaced by "row" throughout. For example, viewing an matrix as being composed of ''n'' rows, the determinant is an ''n''-linear function.


    Multiplicativity and matrix groups

    The determinant is a ''multiplicative map'', i.e., for square matrices A and B of equal size, the determinant of a
    matrix product In mathematics, particularly in linear algebra, matrix multiplication is a binary operation that produces a matrix from two matrices. For matrix multiplication, the number of columns in the first matrix must be equal to the number of rows in the s ...
    equals the product of their determinants: :\det(AB) = \det (A) \det (B) This key fact can be proven by observing that, for a fixed matrix B, both sides of the equation are alternating and multilinear as a function depending on the columns of A. Moreover, they both take the value \det B when A is the identity matrix. The above-mentioned unique characterization of alternating multilinear maps therefore shows this claim. A matrix A is
    invertible In mathematics, the concept of an inverse element generalises the concepts of opposite () and reciprocal () of numbers. Given an operation denoted here , and an identity element denoted , if , one says that is a left inverse of , and that is ...
    precisely if its determinant is nonzero. This follows from the multiplicativity of \det and the formula for the inverse involving the adjugate matrix mentioned below. In this event, the determinant of the inverse matrix is given by :\det\left(A^\right) = \frac = det(A). In particular, products and inverses of matrices with non-zero determinant (respectively, determinant one) still have this property. Thus, the set of such matrices (of fixed size n) forms a group known as the
    general linear group In mathematics, the general linear group of degree ''n'' is the set of invertible matrices, together with the operation of ordinary matrix multiplication. This forms a group, because the product of two invertible matrices is again invertible, ...
    \operatorname_n (respectively, a
    subgroup In group theory, a branch of mathematics, given a group ''G'' under a binary operation ∗, a subset ''H'' of ''G'' is called a subgroup of ''G'' if ''H'' also forms a group under the operation ∗. More precisely, ''H'' is a subgroup ...
    called the
    special linear group In mathematics, the special linear group of degree ''n'' over a field ''F'' is the set of matrices with determinant 1, with the group operations of ordinary matrix multiplication and matrix inversion. This is the normal subgroup of the ge ...
    \operatorname_n \subset \operatorname_n. More generally, the word "special" indicates the subgroup of another
    matrix group In mathematics, a matrix group is a group ''G'' consisting of invertible matrices over a specified field ''K'', with the operation of matrix multiplication. A linear group is a group that is isomorphic to a matrix group (that is, admitting a fa ...
    of matrices of determinant one. Examples include the special orthogonal group (which if ''n'' is 2 or 3 consists of all rotation matrices), and the
    special unitary group In mathematics, the special unitary group of degree , denoted , is the Lie group of unitary matrices with determinant 1. The more general unitary matrices may have complex determinants with absolute value 1, rather than real 1 in the special ...
    . The Cauchy–Binet formula is a generalization of that product formula for ''rectangular'' matrices. This formula can also be recast as a multiplicative formula for compound matrices whose entries are the determinants of all quadratic submatrices of a given matrix.


    Laplace expansion

    Laplace expansion In linear algebra, the Laplace expansion, named after Pierre-Simon Laplace, also called cofactor expansion, is an expression of the determinant of an matrix as a weighted sum of minors, which are the determinants of some submatrices of . Spec ...
    expresses the determinant of a matrix A in terms of determinants of smaller matrices, known as its minors. The minor M_ is defined to be the determinant of the (n-1) \times (n-1)-matrix that results from A by removing the i-th row and the j-th column. The expression (-1)^M_ is known as a cofactor. For every i, one has the equality :\det(A) = \sum_^n (-1)^ a_ M_, which is called the ''Laplace expansion along the th row''. For example, the Laplace expansion along the first row (i=1) gives the following formula: : \begina&b&c\\ d&e&f\\ g&h&i\end = a\begine&f\\ h&i\end - b\begind&f\\ g&i\end + c\begind&e\\ g&h\end Unwinding the determinants of these 2 \times 2-matrices gives back the Leibniz formula mentioned above. Similarly, the ''Laplace expansion along the j-th column'' is the equality :\det(A)= \sum_^n (-1)^ a_ M_. Laplace expansion can be used iteratively for computing determinants, but this approach is inefficient for large matrices. However, it is useful for computing the determinants of highly symmetric matrix such as the
    Vandermonde matrix In linear algebra, a Vandermonde matrix, named after Alexandre-Théophile Vandermonde, is a matrix with the terms of a geometric progression in each row: an matrix :V=\begin 1 & x_1 & x_1^2 & \dots & x_1^\\ 1 & x_2 & x_2^2 & \dots & x_2^\\ 1 & x_ ...
    \begin 1 & 1 & 1 & \cdots & 1 \\ x_1 & x_2 & x_3 & \cdots & x_n \\ x_1^2 & x_2^2 & x_3^2 & \cdots & x_n^2 \\ \vdots & \vdots & \vdots & \ddots & \vdots \\ x_1^ & x_2^ & x_3^ & \cdots & x_n^ \end = \prod_ \left(x_j - x_i\right). This determinant has been applied, for example, in the proof of
    Baker's theorem In transcendental number theory, a mathematical discipline, Baker's theorem gives a lower bound for the absolute value of linear combinations of logarithms of algebraic numbers. The result, proved by , subsumed many earlier results in transcendent ...
    in the theory of
    transcendental number In mathematics, a transcendental number is a number that is not algebraic—that is, not the root of a non-zero polynomial of finite degree with rational coefficients. The best known transcendental numbers are and . Though only a few classes ...
    s.


    Adjugate matrix

    The
    adjugate matrix In linear algebra, the adjugate or classical adjoint of a square matrix is the transpose of its cofactor matrix and is denoted by . It is also occasionally known as adjunct matrix, or "adjoint", though the latter today normally refers to a differe ...
    \operatorname(A) is the transpose of the matrix of the cofactors, that is, : (\operatorname(A))_ = (-1)^ M_. For every matrix, one has : (\det A) I = A\operatornameA = (\operatornameA)\,A. Thus the adjugate matrix can be used for expressing the inverse of a nonsingular matrix: : A^ = \frac 1\operatornameA.


    Block matrices

    The formula for the determinant of a 2 \times 2-matrix above continues to hold, under appropriate further assumptions, for a block matrix, i.e., a matrix composed of four submatrices A, B, C, D of dimension n \times n, n \times m, m \times n and m \times m, respectively. The easiest such formula, which can be proven using either the Leibniz formula or a factorization involving the Schur complement, is :\det\beginA& 0\\ C& D\end = \det(A) \det(D) = \det\beginA& B\\ 0& D\end. If A is
    invertible In mathematics, the concept of an inverse element generalises the concepts of opposite () and reciprocal () of numbers. Given an operation denoted here , and an identity element denoted , if , one says that is a left inverse of , and that is ...
    (and similarly if D is invertible), one has :\det\beginA& B\\ C& D\end = \det(A) \det\left(D - C A^ B\right) . If D is a 1 \times 1-matrix, this simplifies to \det (A) (D - CA^B). If the blocks are square matrices of the ''same'' size further formulas hold. For example, if C and D commute (i.e., CD=DC), then there holds :\det\beginA& B\\ C& D\end = \det(AD - BC). This formula has been generalized to matrices composed of more than 2 \times 2 blocks, again under appropriate commutativity conditions among the individual blocks. For A = D and B = C, the following formula holds (even if A and B do not commute) :\det\beginA& B\\ B& A\end = \det(A - B) \det(A + B).


    Sylvester's determinant theorem

    Sylvester's determinant theorem states that for ''A'', an matrix, and ''B'', an matrix (so that ''A'' and ''B'' have dimensions allowing them to be multiplied in either order forming a square matrix): :\det\left(I_\mathit + AB\right) = \det\left(I_\mathit + BA\right), where ''I''''m'' and ''I''''n'' are the and identity matrices, respectively. From this general result several consequences follow.


    Sum

    The determinant of the sum A+B of two square matrices of the same size is not in general expressible in terms of the determinants of ''A'' and of ''B''. However, for
    positive semidefinite matrices In mathematics, a symmetric matrix In linear algebra, a symmetric matrix is a square matrix that is equal to its transpose. Formally, Because equal matrices have equal dimensions, only square matrices can be symmetric. The entries of ...
    A, B and C of equal size, \det(A + B + C) + \det(C) \geq \det(A + C) + \det(B + C)\text with the corollary \det(A + B) \geq \det(A) + \det(B)\text Conversely, if A and B are
    Hermitian {{Short description, none Numerous things are named after the French mathematician Charles Hermite (1822–1901): Hermite * Cubic Hermite spline, a type of third-degree spline * Gauss–Hermite quadrature, an extension of Gaussian quadrature m ...
    , positive-definite, and size n\times n, then the determinant has concave nth root; this implies \sqrt geq\sqrt \sqrt /math> by homogeneity.


    Sum identity for 2×2 matrices

    For the special case of 2\times 2 matrices with complex entries, the determinant of the sum can be written in terms of determinants and traces in the following identity: :\det(A+B) = \det(A) + \det(B) + \text(A)\text(B) - \text(AB). This has an application to 2\times 2 matrix algebras. For example, consider the complex numbers as a matrix algebra. The complex numbers have a representation as matrices of the form aI + b\mathbf := a\begin 1 & 0 \\ 0 & 1 \end + b\begin 0 & -1 \\ 1 & 0 \end with a and b real. Since \text(\mathbf) = 0, taking A = aI and B = b\mathbf in the above identity gives :\det(aI + b\mathbf) = a^2\det(I) + b^2\det(\mathbf) = a^2 + b^2. This result followed just from \text(\mathbf) = 0 and \det(I) = \det(\mathbf) = 1.


    Properties of the determinant in relation to other notions


    Eigenvalues and characteristic polynomial

    The determinant is closely related to two other central concepts in linear algebra, the
    eigenvalue In linear algebra, an eigenvector () or characteristic vector of a linear transformation is a nonzero vector that changes at most by a scalar factor when that linear transformation is applied to it. The corresponding eigenvalue, often denoted ...
    s and the characteristic polynomial of a matrix. Let A be an n \times n-matrix with
    complex Complex commonly refers to: * Complexity, the behaviour of a system whose components interact in multiple ways so possible interactions are difficult to describe ** Complex system, a system composed of many components which may interact with each ...
    entries with eigenvalues \lambda_1, \lambda_2, \ldots, \lambda_n. (Here it is understood that an eigenvalue with
    algebraic multiplicity In linear algebra, an eigenvector () or characteristic vector of a linear transformation is a nonzero vector that changes at most by a scalar factor when that linear transformation is applied to it. The corresponding eigenvalue, often denoted ...
    occurs times in this list.) Then the determinant of is the product of all eigenvalues, :\det(A) = \prod_^n \lambda_i=\lambda_1\lambda_2\cdots\lambda_n. The product of all non-zero eigenvalues is referred to as pseudo-determinant. The characteristic polynomial is defined as :\chi_A(t) = \det(t \cdot I - A). Here, t is the indeterminate of the polynomial and I is the identity matrix of the same size as A. By means of this polynomial, determinants can be used to find the
    eigenvalue In linear algebra, an eigenvector () or characteristic vector of a linear transformation is a nonzero vector that changes at most by a scalar factor when that linear transformation is applied to it. The corresponding eigenvalue, often denoted ...
    s of the matrix A: they are precisely the roots of this polynomial, i.e., those complex numbers \lambda such that :\chi_A(\lambda) = 0. A
    Hermitian matrix In mathematics, a Hermitian matrix (or self-adjoint matrix) is a complex square matrix that is equal to its own conjugate transpose—that is, the element in the -th row and -th column is equal to the complex conjugate of the element in the -t ...
    is positive definite if all its eigenvalues are positive. Sylvester's criterion asserts that this is equivalent to the determinants of the submatrices :A_k := \begin a_ & a_ & \cdots & a_ \\ a_ & a_ & \cdots & a_ \\ \vdots & \vdots & \ddots & \vdots \\ a_ & a_ & \cdots & a_ \end being positive, for all k between 1 and n.


    Trace

    The trace tr(''A'') is by definition the sum of the diagonal entries of and also equals the sum of the eigenvalues. Thus, for complex matrices , :\det(\exp(A)) = \exp(\operatorname(A)) or, for real matrices , :\operatorname(A) = \log(\det(\exp(A))). Here exp() denotes the
    matrix exponential In mathematics, the matrix exponential is a matrix function on square matrices analogous to the ordinary exponential function. It is used to solve systems of linear differential equations. In the theory of Lie groups, the matrix exponential give ...
    of , because every eigenvalue of corresponds to the eigenvalue exp() of exp(). In particular, given any
    logarithm In mathematics, the logarithm is the inverse function to exponentiation. That means the logarithm of a number  to the base  is the exponent to which must be raised, to produce . For example, since , the ''logarithm base'' 10 of ...
    of , that is, any matrix satisfying :\exp(L) = A the determinant of is given by :\det(A) = \exp(\operatorname(L)). For example, for , , and , respectively, :\begin \det(A) &= \frac\left(\left(\operatorname(A)\right)^2 - \operatorname\left(A^2\right)\right), \\ \det(A) &= \frac\left(\left(\operatorname(A)\right)^3 - 3\operatorname(A) ~ \operatorname\left(A^2\right) + 2 \operatorname\left(A^3\right)\right), \\ \det(A) &= \frac\left(\left(\operatorname(A)\right)^4 - 6\operatorname\left(A^2\right)\left(\operatorname(A)\right)^2 + 3\left(\operatorname\left(A^2\right)\right)^2 + 8\operatorname\left(A^3\right)~\operatorname(A) - 6\operatorname\left(A^4\right)\right). \end cf. Cayley-Hamilton theorem. Such expressions are deducible from combinatorial arguments,
    Newton's identities In mathematics, Newton's identities, also known as the Girard–Newton formulae, give relations between two types of symmetric polynomials, namely between power sums and elementary symmetric polynomials. Evaluated at the roots of a monic polynom ...
    , or the
    Faddeev–LeVerrier algorithm In mathematics (linear algebra), the Faddeev–LeVerrier algorithm is a recursive method to calculate the coefficients of the characteristic polynomial p_A(\lambda)=\det (\lambda I_n - A) of a square matrix, , named after Dmitry Konstantinovi ...
    . That is, for generic , the signed constant term of the characteristic polynomial, determined recursively from :c_n = 1; ~~~c_ = -\frac\sum_^m c_ \operatorname\left(A^k\right) ~~(1 \le m \le n)~. In the general case, this may also be obtained from :\det(A) = \sum_\prod_^n \frac \operatorname\left(A^l\right)^, where the sum is taken over the set of all integers satisfying the equation :\sum_^n lk_l = n. The formula can be expressed in terms of the complete exponential
    Bell polynomial In combinatorial mathematics, the Bell polynomials, named in honor of Eric Temple Bell, are used in the study of set partitions. They are related to Stirling and Bell numbers. They also occur in many applications, such as in the Faà di Bruno' ...
    of ''n'' arguments ''s''''l'' = −(''l'' – 1)! tr(''A''''l'') as :\det(A) = \frac B_n(s_1, s_2, \ldots, s_n). This formula can also be used to find the determinant of a matrix with multidimensional indices and . The product and trace of such matrices are defined in a natural way as :(AB)^I_J = \sum_K A^I_K B^K_J, \operatorname(A) = \sum_I A^I_I. An important arbitrary dimension identity can be obtained from the
    Mercator series In mathematics, the Mercator series or Newton–Mercator series is the Taylor series for the natural logarithm: :\ln(1+x)=x-\frac+\frac-\frac+\cdots In summation notation, :\ln(1+x)=\sum_^\infty \frac x^n. The series converges to the natural ...
    expansion of the logarithm when the expansion converges. If every eigenvalue of ''A'' is less than 1 in absolute value, :\det(I + A) = \sum_^\infty \frac \left(-\sum_^\infty \frac \operatorname\left(A^j\right)\right)^k\,, where is the identity matrix. More generally, if :\sum_^\infty \frac \left(-\sum_^\infty \frac\operatorname\left(A^j\right)\right)^k\,, is expanded as a formal power series in then all coefficients of for are zero and the remaining polynomial is .


    Upper and lower bounds

    For a positive definite matrix , the trace operator gives the following tight lower and upper bounds on the log determinant :\operatorname\left(I - A^\right) \le \log\det(A) \le \operatorname(A - I) with equality if and only if . This relationship can be derived via the formula for the Kullback-Leibler divergence between two
    multivariate normal In probability theory and statistics, the multivariate normal distribution, multivariate Gaussian distribution, or joint normal distribution is a generalization of the one-dimensional (univariate) normal distribution to higher dimensions. One d ...
    distributions. Also, :\frac \leq \det(A)^\frac \leq \frac\operatorname(A) \leq \sqrt. These inequalities can be proved by expressing the traces and the determinant in terms of the eigenvalues. As such, they represent the well-known fact that the harmonic mean is less than the geometric mean, which is less than the arithmetic mean, which is, in turn, less than the root mean square.


    Derivative

    The Leibniz formula shows that the determinant of real (or analogously for complex) square matrices is a
    polynomial In mathematics, a polynomial is an expression consisting of indeterminates (also called variables) and coefficients, that involves only the operations of addition, subtraction, multiplication, and positive-integer powers of variables. An example ...
    function from \mathbf R^ to \mathbf R. In particular, it is everywhere
    differentiable In mathematics, a differentiable function of one real variable is a function whose derivative exists at each point in its domain. In other words, the graph of a differentiable function has a non-vertical tangent line at each interior point in its ...
    . Its derivative can be expressed using
    Jacobi's formula In matrix calculus, Jacobi's formula expresses the derivative of the determinant of a matrix ''A'' in terms of the adjugate of ''A'' and the derivative of ''A''., Part Three, Section 8.3 If is a differentiable map from the real numbers to mat ...
    : :\frac = \operatorname\left(\operatorname(A) \frac\right). where \operatorname(A) denotes the adjugate of A. In particular, if A is invertible, we have :\frac = \det(A) \operatorname\left(A^ \frac\right). Expressed in terms of the entries of A, these are : \frac= \operatorname(A)_ = \det(A)\left(A^\right)_. Yet another equivalent formulation is :\det(A + \epsilon X) - \det(A) = \operatorname(\operatorname(A) X) \epsilon + O\left(\epsilon^2\right) = \det(A) \operatorname\left(A^ X\right) \epsilon + O\left(\epsilon^2\right), using big O notation. The special case where A = I, the identity matrix, yields :\det(I + \epsilon X) = 1 + \operatorname(X) \epsilon + O\left(\epsilon^2\right). This identity is used in describing Lie algebras associated to certain matrix Lie groups. For example, the special linear group \operatorname_n is defined by the equation \det A = 1. The above formula shows that its Lie algebra is the special linear Lie algebra \mathfrak_n consisting of those matrices having trace zero. Writing a 3 \times 3-matrix as A = \begina & b & c\end where a, b,c are column vectors of length 3, then the gradient over one of the three vectors may be written as the cross product of the other two: : \begin \nabla_\mathbf\det(A) &= \mathbf \times \mathbf \\ \nabla_\mathbf\det(A) &= \mathbf \times \mathbf \\ \nabla_\mathbf\det(A) &= \mathbf \times \mathbf. \end


    History

    Historically, determinants were used long before matrices: A determinant was originally defined as a property of a system of linear equations. The determinant "determines" whether the system has a unique solution (which occurs precisely if the determinant is non-zero). In this sense, determinants were first used in the Chinese mathematics textbook ''
    The Nine Chapters on the Mathematical Art ''The Nine Chapters on the Mathematical Art'' () is a Chinese mathematics book, composed by several generations of scholars from the 10th–2nd century BCE, its latest stage being from the 2nd century CE. This book is one of the earliest sur ...
    '' (九章算術, Chinese scholars, around the 3rd century BCE). In Europe, solutions of linear systems of two equations were expressed by Cardano in 1545 by a determinant-like entity. Determinants proper originated from the work of
    Seki Takakazu , Selin, Helaine. (1997). ''Encyclopaedia of the History of Science, Technology, and Medicine in Non-Western Cultures,'' p. 890 also known as ,Selin, was a Japanese mathematician and author of the Edo period. Seki laid foundations for the subs ...
    in 1683 in Japan and parallelly of Leibniz in 1693. stated, without proof, Cramer's rule. Both Cramer and also were led to determinants by the question of
    plane curve In mathematics, a plane curve is a curve in a plane that may be either a Euclidean plane, an affine plane or a projective plane. The most frequently studied cases are smooth plane curves (including piecewise smooth plane curves), and algebraic ...
    s passing through a given set of points. Vandermonde (1771) first recognized determinants as independent functions.Campbell, H: "Linear Algebra With Applications", pages 111–112. Appleton Century Crofts, 1971 gave the general method of expanding a determinant in terms of its complementary minors: Vandermonde had already given a special case. Immediately following, Lagrange (1773) treated determinants of the second and third order and applied it to questions of
    elimination theory Elimination may refer to: Science and medicine *Elimination reaction, an organic reaction in which two functional groups split to form an organic product *Bodily waste elimination, discharging feces, urine, or foreign substances from the body ...
    ; he proved many special cases of general identities.
    Gauss Johann Carl Friedrich Gauss (; german: Gauß ; la, Carolus Fridericus Gauss; 30 April 177723 February 1855) was a German mathematician and physicist who made significant contributions to many fields in mathematics and science. Sometimes refer ...
    (1801) made the next advance. Like Lagrange, he made much use of determinants in the
    theory of numbers Number theory (or arithmetic or higher arithmetic in older usage) is a branch of pure mathematics devoted primarily to the study of the integers and integer-valued functions. German mathematician Carl Friedrich Gauss (1777–1855) said, "Mathe ...
    . He introduced the word "determinant" (Laplace had used "resultant"), though not in the present signification, but rather as applied to the discriminant of a quantic. Gauss also arrived at the notion of reciprocal (inverse) determinants, and came very near the multiplication theorem. The next contributor of importance is Binet (1811, 1812), who formally stated the theorem relating to the product of two matrices of ''m'' columns and ''n'' rows, which for the special case of reduces to the multiplication theorem. On the same day (November 30, 1812) that Binet presented his paper to the Academy,
    Cauchy Baron Augustin-Louis Cauchy (, ; ; 21 August 178923 May 1857) was a French mathematician, engineer, and physicist who made pioneering contributions to several branches of mathematics, including mathematical analysis and continuum mechanics. He w ...
    also presented one on the subject. (See Cauchy–Binet formula.) In this he used the word "determinant" in its present sense, summarized and simplified what was then known on the subject, improved the notation, and gave the multiplication theorem with a proof more satisfactory than Binet's. With him begins the theory in its generality. used the functional determinant which Sylvester later called the Jacobian. In his memoirs in '' Crelle's Journal'' for 1841 he specially treats this subject, as well as the class of alternating functions which Sylvester has called ''alternants''. About the time of Jacobi's last memoirs, Sylvester (1839) and Cayley began their work. introduced the modern notation for the determinant using vertical bars. The study of special forms of determinants has been the natural result of the completion of the general theory. Axisymmetric determinants have been studied by Lebesgue,
    Hesse Hesse (, , ) or Hessia (, ; german: Hessen ), officially the State of Hessen (german: links=no, Land Hessen), is a state in Germany. Its capital city is Wiesbaden, and the largest urban area is Frankfurt. Two other major historic cities are Dar ...
    , and Sylvester; persymmetric determinants by Sylvester and Hankel; circulants by Catalan, Spottiswoode, Glaisher, and Scott; skew determinants and Pfaffians, in connection with the theory of
    orthogonal transformation In linear algebra, an orthogonal transformation is a linear transformation ''T'' : ''V'' → ''V'' on a real inner product space ''V'', that preserves the inner product. That is, for each pair of elements of ''V'', we h ...
    , by Cayley; continuants by Sylvester;
    Wronskian In mathematics, the Wronskian (or Wrońskian) is a determinant introduced by and named by . It is used in the study of differential equations, where it can sometimes show linear independence in a set of solutions. Definition The Wronskian o ...
    s (so called by
    Muir "Muir" is the Scots word for "moorland", and Scots Gaelic for "sea", and is the etymological origin of the surname and Clan Muir/Mure/Moore in Scotland and other parts of the world. Places United States * Muir, Willits, California, a former unin ...
    ) by Christoffel and Frobenius; compound determinants by Sylvester, Reiss, and Picquet; Jacobians and Hessians by Sylvester; and symmetric gauche determinants by Trudi. Of the textbooks on the subject Spottiswoode's was the first. In America, Hanus (1886), Weld (1893), and Muir/Metzler (1933) published treatises.


    Applications


    Cramer's rule

    Determinants can be used to describe the solutions of a linear system of equations, written in matrix form as Ax = b. This equation has a unique solution x if and only if \det (A) is nonzero. In this case, the solution is given by Cramer's rule: :x_i = \frac \qquad i = 1, 2, 3, \ldots, n where A_i is the matrix formed by replacing the i-th column of A by the column vector b. This follows immediately by column expansion of the determinant, i.e. :\det(A_i) = \det\begina_1 & \ldots & b & \ldots & a_n\end = \sum_^n x_j\det\begina_1 & \ldots & a_ & a_j & a_ & \ldots & a_n\end = x_i\det(A) where the vectors a_j are the columns of ''A''. The rule is also implied by the identity :A\, \operatorname(A) = \operatorname(A)\, A = \det(A)\, I_n. Cramer's rule can be implemented in \operatorname O(n^3) time, which is comparable to more common methods of solving systems of linear equations, such as LU, QR, or singular value decomposition.


    Linear independence

    Determinants can be used to characterize
    linearly dependent In the theory of vector spaces, a set of vectors is said to be if there is a nontrivial linear combination of the vectors that equals the zero vector. If no such linear combination exists, then the vectors are said to be . These concepts are ...
    vectors: \det A is zero if and only if the column vectors (or, equivalently, the row vectors) of the matrix A are linearly dependent. For example, given two linearly independent vectors v_1, v_2 \in \mathbf R^3, a third vector v_3 lies in the plane spanned by the former two vectors exactly if the determinant of the 3 \times 3-matrix consisting of the three vectors is zero. The same idea is also used in the theory of
    differential equation In mathematics, a differential equation is an equation that relates one or more unknown functions and their derivatives. In applications, the functions generally represent physical quantities, the derivatives represent their rates of change, an ...
    s: given functions f_1(x), \dots, f_n(x) (supposed to be n-1 times
    differentiable In mathematics, a differentiable function of one real variable is a function whose derivative exists at each point in its domain. In other words, the graph of a differentiable function has a non-vertical tangent line at each interior point in its ...
    ), the
    Wronskian In mathematics, the Wronskian (or Wrońskian) is a determinant introduced by and named by . It is used in the study of differential equations, where it can sometimes show linear independence in a set of solutions. Definition The Wronskian o ...
    is defined to be :W(f_1, \ldots, f_n)(x) = \begin f_1(x) & f_2(x) & \cdots & f_n(x) \\ f_1'(x) & f_2'(x) & \cdots & f_n'(x) \\ \vdots & \vdots & \ddots & \vdots \\ f_1^(x) & f_2^(x) & \cdots & f_n^(x) \end. It is non-zero (for some x) in a specified interval if and only if the given functions and all their derivatives up to order n-1 are linearly independent. If it can be shown that the Wronskian is zero everywhere on an interval then, in the case of analytic functions, this implies the given functions are linearly dependent. See the Wronskian and linear independence. Another such use of the determinant is the resultant, which gives a criterion when two
    polynomial In mathematics, a polynomial is an expression consisting of indeterminates (also called variables) and coefficients, that involves only the operations of addition, subtraction, multiplication, and positive-integer powers of variables. An example ...
    s have a common root.


    Orientation of a basis

    The determinant can be thought of as assigning a number to every
    sequence In mathematics, a sequence is an enumerated collection of objects in which repetitions are allowed and order matters. Like a set, it contains members (also called ''elements'', or ''terms''). The number of elements (possibly infinite) is calle ...
    of ''n'' vectors in R''n'', by using the square matrix whose columns are the given vectors. For instance, an
    orthogonal matrix In linear algebra, an orthogonal matrix, or orthonormal matrix, is a real square matrix whose columns and rows are orthonormal vectors. One way to express this is Q^\mathrm Q = Q Q^\mathrm = I, where is the transpose of and is the identity m ...
    with entries in R''n'' represents an orthonormal basis in
    Euclidean space Euclidean space is the fundamental space of geometry, intended to represent physical space. Originally, that is, in Euclid's ''Elements'', it was the three-dimensional space of Euclidean geometry, but in modern mathematics there are Euclidean ...
    . The determinant of such a matrix determines whether the orientation of the basis is consistent with or opposite to the orientation of the standard basis. If the determinant is +1, the basis has the same orientation. If it is −1, the basis has the opposite orientation. More generally, if the determinant of ''A'' is positive, ''A'' represents an orientation-preserving
    linear transformation In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that pre ...
    (if ''A'' is an orthogonal or matrix, this is a rotation), while if it is negative, ''A'' switches the orientation of the basis.


    Volume and Jacobian determinant

    As pointed out above, the absolute value of the determinant of real vectors is equal to the volume of the parallelepiped spanned by those vectors. As a consequence, if f : \mathbf R^n \to \mathbf R^n is the linear map given by multiplication with a matrix A, and S \subset \mathbf R^n is any
    measurable In mathematics, the concept of a measure is a generalization and formalization of geometrical measures (length, area, volume) and other common notions, such as mass and probability of events. These seemingly distinct concepts have many simila ...
    subset, then the volume of f(S) is given by , \det(A), times the volume of S. More generally, if the linear map f : \mathbf R^n \to \mathbf R^m is represented by the m \times n-matrix A, then the n-
    dimension In physics and mathematics, the dimension of a mathematical space (or object) is informally defined as the minimum number of coordinates needed to specify any point within it. Thus, a line has a dimension of one (1D) because only one coor ...
    al volume of f(S) is given by: :\operatorname(f(S)) = \sqrt \operatorname(S). By calculating the volume of the
    tetrahedron In geometry, a tetrahedron (plural: tetrahedra or tetrahedrons), also known as a triangular pyramid, is a polyhedron composed of four triangular faces, six straight edges, and four vertex corners. The tetrahedron is the simplest of all th ...
    bounded by four points, they can be used to identify skew lines. The volume of any tetrahedron, given its vertices a, b, c, d, \frac 1 6 \cdot , \det(a-b,b-c,c-d), , or any other combination of pairs of vertices that form a spanning tree over the vertices. For a general differentiable function, much of the above carries over by considering the Jacobian matrix of ''f''. For :f: \mathbf R^n \rightarrow \mathbf R^n, the Jacobian matrix is the matrix whose entries are given by the partial derivatives :D(f) = \left(\frac \right)_. Its determinant, the
    Jacobian determinant In vector calculus, the Jacobian matrix (, ) of a vector-valued function of several variables is the matrix of all its first-order partial derivatives. When this matrix is square, that is, when the function takes the same number of variables ...
    , appears in the higher-dimensional version of integration by substitution: for suitable functions ''f'' and an open subset ''U'' of R''n'' (the domain of ''f''), the integral over ''f''(''U'') of some other function is given by :\int_ \phi(\mathbf)\, d\mathbf = \int_U \phi(f(\mathbf)) \left, \det(\operatornamef)(\mathbf)\ \,d\mathbf. The Jacobian also occurs in the
    inverse function theorem In mathematics, specifically differential calculus, the inverse function theorem gives a sufficient condition for a function to be invertible in a neighborhood of a point in its domain: namely, that its ''derivative is continuous and non-zero at ...
    . When applied to the field of
    Cartography Cartography (; from grc, χάρτης , "papyrus, sheet of paper, map"; and , "write") is the study and practice of making and using maps. Combining science, aesthetics and technique, cartography builds on the premise that reality (or an i ...
    , the determinant can be used to measure the rate of expansion of a map near the poles.


    Abstract algebraic aspects


    Determinant of an endomorphism

    The above identities concerning the determinant of products and inverses of matrices imply that
    similar matrices In linear algebra, two ''n''-by-''n'' matrices and are called similar if there exists an invertible ''n''-by-''n'' matrix such that B = P^ A P . Similar matrices represent the same linear map under two (possibly) different bases, with being ...
    have the same determinant: two matrices ''A'' and ''B'' are similar, if there exists an invertible matrix ''X'' such that . Indeed, repeatedly applying the above identities yields :\det(A) = \det(X)^ \det(B)\det(X) = \det(B) \det(X)^ \det(X) = \det(B). The determinant is therefore also called a similarity invariant. The determinant of a
    linear transformation In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that pre ...
    :T : V \to V for some finite-dimensional
    vector space In mathematics and physics, a vector space (also called a linear space) is a set whose elements, often called '' vectors'', may be added together and multiplied ("scaled") by numbers called ''scalars''. Scalars are often real numbers, but can ...
    ''V'' is defined to be the determinant of the matrix describing it, with respect to an arbitrary choice of
    basis Basis may refer to: Finance and accounting * Adjusted basis, the net cost of an asset after adjusting for various tax-related items *Basis point, 0.01%, often used in the context of interest rates * Basis trading, a trading strategy consisting ...
    in ''V''. By the similarity invariance, this determinant is independent of the choice of the basis for ''V'' and therefore only depends on the endomorphism ''T''.


    Square matrices over commutative rings

    The above definition of the determinant using the Leibniz rule holds works more generally when the entries of the matrix are elements of a commutative ring R, such as the integers \mathbf Z, as opposed to the field of real or complex numbers. Moreover, the characterization of the determinant as the unique alternating multilinear map that satisfies \det(I) = 1 still holds, as do all the properties that result from that characterization. A matrix A \in \operatorname_(R) is invertible (in the sense that there is an inverse matrix whose entries are in R) if and only if its determinant is an
    invertible element In mathematics, the concept of an inverse element generalises the concepts of opposite () and reciprocal () of numbers. Given an operation denoted here , and an identity element denoted , if , one says that is a left inverse of , and that is ...
    in R. For R = \mathbf Z, this means that the determinant is +1 or −1. Such a matrix is called unimodular. The determinant being multiplicative, it defines a
    group homomorphism In mathematics, given two groups, (''G'', ∗) and (''H'', ·), a group homomorphism from (''G'', ∗) to (''H'', ·) is a function ''h'' : ''G'' → ''H'' such that for all ''u'' and ''v'' in ''G'' it holds that : h(u*v) = h(u) \cdot h(v) w ...
    :\operatorname_n(R) \rightarrow R^\times, between the
    general linear group In mathematics, the general linear group of degree ''n'' is the set of invertible matrices, together with the operation of ordinary matrix multiplication. This forms a group, because the product of two invertible matrices is again invertible, ...
    (the group of invertible n \times n-matrices with entries in R) and the
    multiplicative group In mathematics and group theory, the term multiplicative group refers to one of the following concepts: *the group under multiplication of the invertible elements of a field, ring, or other structure for which one of its operations is referre ...
    of units in R. Since it respects the multiplication in both groups, this map is a
    group homomorphism In mathematics, given two groups, (''G'', ∗) and (''H'', ·), a group homomorphism from (''G'', ∗) to (''H'', ·) is a function ''h'' : ''G'' → ''H'' such that for all ''u'' and ''v'' in ''G'' it holds that : h(u*v) = h(u) \cdot h(v) w ...
    . Given a
    ring homomorphism In ring theory, a branch of abstract algebra, a ring homomorphism is a structure-preserving function between two rings. More explicitly, if ''R'' and ''S'' are rings, then a ring homomorphism is a function such that ''f'' is: :addition preser ...
    f : R \to S, there is a map \operatorname_n(f) : \operatorname_n(R) \to \operatorname_n(S) given by replacing all entries in R by their images under f. The determinant respects these maps, i.e., the identity :f(\det((a_))) = \det ((f(a_))) holds. In other words, the displayed commutative diagram commutes. For example, the determinant of the
    complex conjugate In mathematics, the complex conjugate of a complex number is the number with an equal real part and an imaginary part equal in magnitude but opposite in sign. That is, (if a and b are real, then) the complex conjugate of a + bi is equal to a - ...
    of a complex matrix (which is also the determinant of its conjugate transpose) is the complex conjugate of its determinant, and for integer matrices: the reduction modulo m of the determinant of such a matrix is equal to the determinant of the matrix reduced modulo m (the latter determinant being computed using
    modular arithmetic In mathematics, modular arithmetic is a system of arithmetic for integers, where numbers "wrap around" when reaching a certain value, called the modulus. The modern approach to modular arithmetic was developed by Carl Friedrich Gauss in his boo ...
    ). In the language of category theory, the determinant is a
    natural transformation In category theory, a branch of mathematics, a natural transformation provides a way of transforming one functor into another while respecting the internal structure (i.e., the composition of morphisms) of the categories involved. Hence, a natur ...
    between the two functors \operatorname_n and (-)^\times. Adding yet another layer of abstraction, this is captured by saying that the determinant is a morphism of
    algebraic group In mathematics, an algebraic group is an algebraic variety endowed with a group structure which is compatible with its structure as an algebraic variety. Thus the study of algebraic groups belongs both to algebraic geometry and group theory. Ma ...
    s, from the general linear group to the
    multiplicative group In mathematics and group theory, the term multiplicative group refers to one of the following concepts: *the group under multiplication of the invertible elements of a field, ring, or other structure for which one of its operations is referre ...
    , :\det: \operatorname_n \to \mathbb G_m.


    Exterior algebra

    The determinant of a linear transformation T : V \to V of an n-dimensional vector space V or, more generally a free module of (finite)
    rank Rank is the relative position, value, worth, complexity, power, importance, authority, level, etc. of a person or object within a ranking, such as: Level or position in a hierarchical organization * Academic rank * Diplomatic rank * Hierarchy * ...
    n over a commutative ring R can be formulated in a coordinate-free manner by considering the n-th exterior power \bigwedge^n V of V. The map T induces a linear map :\begin \bigwedge^n T: \bigwedge^n V &\rightarrow \bigwedge^n V \\ v_1 \wedge v_2 \wedge \dots \wedge v_n &\mapsto T v_1 \wedge T v_2 \wedge \dots \wedge T v_n. \end As \bigwedge^n V is one-dimensional, the map \bigwedge^n T is given by multiplying with some scalar, i.e., an element in R. Some authors such as use this fact to ''define'' the determinant to be the element in R satisfying the following identity (for all v_i \in V): :\left(\bigwedge^n T\right)\left(v_1 \wedge \dots \wedge v_n\right) = \det(T) \cdot v_1 \wedge \dots \wedge v_n. This definition agrees with the more concrete coordinate-dependent definition. This can be shown using the uniqueness of a multilinear alternating form on n-tuples of vectors in R^n. For this reason, the highest non-zero exterior power \bigwedge^n V (as opposed to the determinant associated to an endomorphism) is sometimes also called the determinant of V and similarly for more involved objects such as vector bundles or
    chain complex In mathematics, a chain complex is an algebraic structure that consists of a sequence of abelian groups (or modules) and a sequence of homomorphisms between consecutive groups such that the image of each homomorphism is included in the kernel of t ...
    es of vector spaces. Minors of a matrix can also be cast in this setting, by considering lower alternating forms \bigwedge^k V with k < n.


    Generalizations and related notions

    Determinants as treated above admit several variants: the permanent of a matrix is defined as the determinant, except that the factors \sgn(\sigma) occurring in Leibniz's rule are omitted. The immanant generalizes both by introducing a character of the
    symmetric group In abstract algebra, the symmetric group defined over any set is the group whose elements are all the bijections from the set to itself, and whose group operation is the composition of functions. In particular, the finite symmetric group ...
    S_n in Leibniz's rule.


    Determinants for finite-dimensional algebras

    For any associative algebra A that is finite-dimensional as a vector space over a field F, there is a determinant map :\det : A \to F. This definition proceeds by establishing the characteristic polynomial independently of the determinant, and defining the determinant as the lowest order term of this polynomial. This general definition recovers the determinant for the matrix algebra A = \operatorname_(F), but also includes several further cases including the determinant of a quaternion, :\det (a + ib+jc+kd) = a^2 + b^2 + c^2 + d^2, the norm N_ : L \to F of a field extension, as well as the Pfaffian of a skew-symmetric matrix and the
    reduced norm In ring theory and related areas of mathematics a central simple algebra (CSA) over a field ''K'' is a finite-dimensional associative ''K''-algebra ''A'' which is simple, and for which the center is exactly ''K''. (Note that ''not'' every simple ...
    of a central simple algebra, also arise as special cases of this construction.


    Infinite matrices

    For matrices with an infinite number of rows and columns, the above definitions of the determinant do not carry over directly. For example, in the Leibniz formula, an infinite sum (all of whose terms are infinite products) would have to be calculated.
    Functional analysis Functional analysis is a branch of mathematical analysis, the core of which is formed by the study of vector spaces endowed with some kind of limit-related structure (e.g. inner product, norm, topology, etc.) and the linear functions defined o ...
    provides different extensions of the determinant for such infinite-dimensional situations, which however only work for particular kinds of operators. The
    Fredholm determinant In mathematics, the Fredholm determinant is a complex-valued function which generalizes the determinant of a finite dimensional linear operator. It is defined for bounded operators on a Hilbert space which differ from the identity operator by a tra ...
    defines the determinant for operators known as
    trace class operator In mathematics, specifically functional analysis, a trace-class operator is a linear operator for which a trace may be defined, such that the trace is a finite number independent of the choice of basis used to compute the trace. This trace of trace ...
    s by an appropriate generalization of the formula :\det(I+A) = \exp(\operatorname(\log(I+A))). Another infinite-dimensional notion of determinant is the
    functional determinant In functional analysis, a branch of mathematics, it is sometimes possible to generalize the notion of the determinant of a square matrix of finite order (representing a linear transformation from a finite-dimensional vector space to itself) to the i ...
    .


    Operators in von Neumann algebras

    For operators in a finite
    factor Factor, a Latin word meaning "who/which acts", may refer to: Commerce * Factor (agent), a person who acts for, notably a mercantile and colonial agent * Factor (Scotland), a person or firm managing a Scottish estate * Factors of production, suc ...
    , one may define a positive real-valued determinant called the Fuglede−Kadison determinant using the canonical trace. In fact, corresponding to every tracial state on a
    von Neumann algebra In mathematics, a von Neumann algebra or W*-algebra is a *-algebra of bounded operators on a Hilbert space that is closed in the weak operator topology and contains the identity operator. It is a special type of C*-algebra. Von Neumann algebra ...
    there is a notion of Fuglede−Kadison determinant.


    Related notions for non-commutative rings

    For matrices over non-commutative rings, multilinearity and alternating properties are incompatible for , so there is no good definition of the determinant in this setting. For square matrices with entries in a non-commutative ring, there are various difficulties in defining determinants analogously to that for commutative rings. A meaning can be given to the Leibniz formula provided that the order for the product is specified, and similarly for other definitions of the determinant, but non-commutativity then leads to the loss of many fundamental properties of the determinant, such as the multiplicative property or that the determinant is unchanged under transposition of the matrix. Over non-commutative rings, there is no reasonable notion of a multilinear form (existence of a nonzero with a regular element of ''R'' as value on some pair of arguments implies that ''R'' is commutative). Nevertheless, various notions of non-commutative determinant have been formulated that preserve some of the properties of determinants, notably quasideterminants and the Dieudonné determinant. For some classes of matrices with non-commutative elements, one can define the determinant and prove linear algebra theorems that are very similar to their commutative analogs. Examples include the ''q''-determinant on quantum groups, the Capelli determinant on Capelli matrices, and the
    Berezinian In mathematics and theoretical physics, the Berezinian or superdeterminant is a generalization of the determinant to the case of supermatrices. The name is for Felix Berezin. The Berezinian plays a role analogous to the determinant when considerin ...
    on supermatrices (i.e., matrices whose entries are elements of \mathbb Z_2-
    graded ring In mathematics, in particular abstract algebra, a graded ring is a ring such that the underlying additive group is a direct sum of abelian groups R_i such that R_i R_j \subseteq R_. The index set is usually the set of nonnegative integers or the ...
    s).
    Manin matrices In mathematics, Manin matrices, named after Yuri Manin who introduced them around 1987–88, are a class of matrices with elements in a not-necessarily commutative ring, which in a certain sense behave like matrices whose elements commute. In parti ...
    form the class closest to matrices with commutative elements.


    Calculation

    Determinants are mainly used as a theoretical tool. They are rarely calculated explicitly in numerical linear algebra, where for applications like checking invertibility and finding eigenvalues the determinant has largely been supplanted by other techniques. Computational geometry, however, does frequently use calculations related to determinants. While the determinant can be computed directly using the Leibniz rule this approach is extremely inefficient for large matrices, since that formula requires calculating n! (n factorial) products for an n \times n-matrix. Thus, the number of required operations grows very quickly: it is of order n!. The Laplace expansion is similarly inefficient. Therefore, more involved techniques have been developed for calculating determinants.


    Decomposition methods

    Some methods compute \det(A) by writing the matrix as a product of matrices whose determinants can be more easily computed. Such techniques are referred to as decomposition methods. Examples include the
    LU decomposition In numerical analysis and linear algebra, lower–upper (LU) decomposition or factorization factors a matrix as the product of a lower triangular matrix and an upper triangular matrix (see matrix decomposition). The product sometimes includes a p ...
    , the
    QR decomposition In linear algebra, a QR decomposition, also known as a QR factorization or QU factorization, is a decomposition of a matrix ''A'' into a product ''A'' = ''QR'' of an orthogonal matrix ''Q'' and an upper triangular matrix ''R''. QR decomp ...
    or the
    Cholesky decomposition In linear algebra, the Cholesky decomposition or Cholesky factorization (pronounced ) is a decomposition of a Hermitian, positive-definite matrix into the product of a lower triangular matrix and its conjugate transpose, which is useful for effici ...
    (for
    positive definite matrices In mathematics, a symmetric matrix M with real entries is positive-definite if the real number z^\textsfMz is positive for every nonzero real column vector z, where z^\textsf is the transpose of More generally, a Hermitian matrix (that is, a c ...
    ). These methods are of order \operatorname O(n^3), which is a significant improvement over \operatorname O (n!). For example, LU decomposition expresses A as a product : A = PLU. of a permutation matrix P (which has exactly a single 1 in each column, and otherwise zeros), a lower triangular matrix L and an upper triangular matrix U. The determinants of the two triangular matrices L and U can be quickly calculated, since they are the products of the respective diagonal entries. The determinant of P is just the sign \varepsilon of the corresponding permutation (which is +1 for an even number of permutations and is -1 for an odd number of permutations). Once such a LU decomposition is known for A, its determinant is readily computed as : \det(A) = \varepsilon \det(L)\cdot\det(U).


    Further methods

    The order \operatorname O(n^3) reached by decomposition methods has been improved by different methods. If two matrices of order n can be multiplied in time M(n), where M(n) \ge n^a for some a>2, then there is an algorithm computing the determinant in time O(M(n)). This means, for example, that an \operatorname O(n^) algorithm for computing the determinant exists based on the
    Coppersmith–Winograd algorithm In theoretical computer science, the computational complexity of matrix multiplication dictates how quickly the operation of matrix multiplication can be performed. Matrix multiplication algorithms are a central subroutine in theoretical and nu ...
    . This exponent has been further lowered, as of 2016, to 2.373. In addition to the complexity of the algorithm, further criteria can be used to compare algorithms. Especially for applications concerning matrices over rings, algorithms that compute the determinant without any divisions exist. (By contrast, Gauss elimination requires divisions.) One such algorithm, having complexity \operatorname O(n^4) is based on the following idea: one replaces permutations (as in the Leibniz rule) by so-called closed ordered walks, in which several items can be repeated. The resulting sum has more terms than in the Leibniz rule, but in the process several of these products can be reused, making it more efficient than naively computing with the Leibniz rule. Algorithms can also be assessed according to their
    bit complexity In computer science, the computational complexity or simply complexity of an algorithm is the amount of resources required to run it. Particular focus is given to computation time (generally measured by the number of needed elementary operations) ...
    , i.e., how many bits of accuracy are needed to store intermediate values occurring in the computation. For example, the Gaussian elimination (or LU decomposition) method is of order \operatorname O(n^3), but the bit length of intermediate values can become exponentially long. By comparison, the Bareiss Algorithm, is an exact-division method (so it does use division, but only in cases where these divisions can be performed without remainder) is of the same order, but the bit complexity is roughly the bit size of the original entries in the matrix times n. If the determinant of ''A'' and the inverse of ''A'' have already been computed, the
    matrix determinant lemma In mathematics, in particular linear algebra, the matrix determinant lemma computes the determinant of the sum of an invertible matrix A and the dyadic product, uvT, of a column vector u and a row vector vT. Statement Suppose A is an invertib ...
    allows rapid calculation of the determinant of , where ''u'' and ''v'' are column vectors. Charles Dodgson (i.e.
    Lewis Carroll Charles Lutwidge Dodgson (; 27 January 1832 – 14 January 1898), better known by his pen name Lewis Carroll, was an English author, poet and mathematician. His most notable works are '' Alice's Adventures in Wonderland'' (1865) and its sequ ...
    of ''
    Alice's Adventures in Wonderland ''Alice's Adventures in Wonderland'' (commonly ''Alice in Wonderland'') is an 1865 English novel by Lewis Carroll. It details the story of a young girl named Alice who falls through a rabbit hole into a fantasy world of anthropomorphic creature ...
    '' fame) invented a method for computing determinants called
    Dodgson condensation In mathematics, Dodgson condensation or method of contractants is a method of computing the determinants of square matrices. It is named for its inventor, Charles Lutwidge Dodgson (better known by his pseudonym, as Lewis Carroll, the popular auth ...
    . Unfortunately this interesting method does not always work in its original form.


    See also

    * Cauchy determinant * Cayley–Menger determinant * Dieudonné determinant * Slater determinant * Determinantal conjecture


    Notes


    References

    * * * * * * * * * * * * * * * * * * * * G. Baley Price (1947) "Some identities in the theory of determinants", American Mathematical Monthly 54:75–90 * * * * * * *


    Historical references

    * * * * * * * * *


    External links

    * * *
    Determinant Interactive Program and Tutorial

    Linear algebra: determinants.
    Compute determinants of matrices up to order 6 using Laplace expansion you choose.
    Determinant Calculator
    Calculator for matrix determinants, up to the 8th order.


    Determinants explained in an easy fashion in the 4th chapter as a part of a Linear Algebra course.
    {{authority control Matrix theory Linear algebra Homogeneous polynomials Algebra