In
vector calculus
Vector calculus or vector analysis is a branch of mathematics concerned with the differentiation and integration of vector fields, primarily in three-dimensional Euclidean space, \mathbb^3. The term ''vector calculus'' is sometimes used as a ...
, the Jacobian matrix (, ) of a
vector-valued function
A vector-valued function, also referred to as a vector function, is a mathematical function of one or more variables whose range is a set of multidimensional vectors or infinite-dimensional vectors. The input of a vector-valued function could ...
of several variables is the
matrix of all its first-order
partial derivative
In mathematics, a partial derivative of a function of several variables is its derivative with respect to one of those variables, with the others held constant (as opposed to the total derivative, in which all variables are allowed to vary). P ...
s. If this matrix is
square
In geometry, a square is a regular polygon, regular quadrilateral. It has four straight sides of equal length and four equal angles. Squares are special cases of rectangles, which have four equal angles, and of rhombuses, which have four equal si ...
, that is, if the number of variables equals the number of
components
Component may refer to:
In engineering, science, and technology Generic systems
*System components, an entity with discrete structure, such as an assembly or software module, within a system considered at a particular level of analysis
* Lumped e ...
of function values, then its
determinant
In mathematics, the determinant is a Scalar (mathematics), scalar-valued function (mathematics), function of the entries of a square matrix. The determinant of a matrix is commonly denoted , , or . Its value characterizes some properties of the ...
is called the Jacobian determinant. Both the matrix and (if applicable) the determinant are often referred to simply as the Jacobian. They are named after
Carl Gustav Jacob Jacobi.
The Jacobian matrix is the natural generalization to vector valued functions of several variables of the
derivative
In mathematics, the derivative is a fundamental tool that quantifies the sensitivity to change of a function's output with respect to its input. The derivative of a function of a single variable at a chosen input value, when it exists, is t ...
and the
differential of a usual function. This generalization includes generalizations of the
inverse function theorem and the
implicit function theorem, where the non-nullity of the derivative is replaced by the non-nullity of the Jacobian determinant, and the
multiplicative inverse
In mathematics, a multiplicative inverse or reciprocal for a number ''x'', denoted by 1/''x'' or ''x''−1, is a number which when Multiplication, multiplied by ''x'' yields the multiplicative identity, 1. The multiplicative inverse of a ra ...
of the derivative is replaced by the
inverse of the Jacobian matrix.
The Jacobian determinant is fundamentally used for changes of variables in
multiple integrals.
Definition
Let
be a function such that each of its first-order partial derivatives exists on
explicitly
where
is the transpose (row vector) of the
gradient of the
-th component.
The Jacobian matrix, whose entries are functions of , is denoted in various ways; other common notations include ,
, and
. Some authors define the Jacobian as the
transpose
In linear algebra, the transpose of a Matrix (mathematics), 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 ...
of the form given above.
The Jacobian matrix
represents the
differential of at every point where is differentiable. In detail, if is a
displacement vector represented by a
column matrix, the
matrix product is another displacement vector, that is the best linear approximation of the change of in a
neighborhood
A neighbourhood (Commonwealth English) or neighborhood (American English) is a geographically localized community within a larger town, city, suburb or rural area, sometimes consisting of a single street and the buildings lining it. Neigh ...
of , if is
differentiable at . This means that the function that maps to is the best
linear approximation of for all points close to . The
linear map
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 p ...
is known as the ''derivative'' or the
''differential'' of at .
When
, the Jacobian matrix is square, so its
determinant
In mathematics, the determinant is a Scalar (mathematics), scalar-valued function (mathematics), function of the entries of a square matrix. The determinant of a matrix is commonly denoted , , or . Its value characterizes some properties of the ...
is a well-defined function of , known as the Jacobian determinant of . It carries important information about the local behavior of . In particular, the function has a differentiable
inverse function
In mathematics, the inverse function of a function (also called the inverse of ) is a function that undoes the operation of . The inverse of exists if and only if is bijective, and if it exists, is denoted by f^ .
For a function f\colon ...
in a neighborhood of a point if and only if the Jacobian determinant is nonzero at (see
inverse function theorem for an explanation of this and
Jacobian conjecture for a related problem of ''global'' invertibility). The Jacobian determinant also appears when changing the variables in
multiple integrals (see
substitution rule for multiple variables).
When
, that is when
is a
scalar-valued function, the Jacobian matrix reduces to the
row vector ; this row vector of all first-order partial derivatives of is the transpose of the
gradient of , i.e.
. Specializing further, when
, that is when
is a
scalar-valued function of a single variable, the Jacobian matrix has a single entry; this entry is the derivative of the function .
These concepts are named after the
mathematician
A mathematician is someone who uses an extensive knowledge of mathematics in their work, typically to solve mathematical problems. Mathematicians are concerned with numbers, data, quantity, mathematical structure, structure, space, Mathematica ...
Carl Gustav Jacob Jacobi (1804–1851).
Jacobian matrix
The Jacobian of a vector-valued function in several variables generalizes the
gradient of a
scalar-valued function in several variables, which in turn generalizes the derivative of a scalar-valued function of a single variable. In other words, the Jacobian matrix of a scalar-valued
function of several variables is (the transpose of) its gradient and the gradient of a scalar-valued function of a single variable is its derivative.
At each point where a function is differentiable, its Jacobian matrix can also be thought of as describing the amount of "stretching", "rotating" or "transforming" that the function imposes locally near that point. For example, if is used to smoothly transform an image, the Jacobian matrix , describes how the image in the neighborhood of is transformed.
If a function is differentiable at a point, its differential is given in coordinates by the Jacobian matrix. However, a function does not need to be differentiable for its Jacobian matrix to be defined, since only its first-order
partial derivative
In mathematics, a partial derivative of a function of several variables is its derivative with respect to one of those variables, with the others held constant (as opposed to the total derivative, in which all variables are allowed to vary). P ...
s are required to exist.
If is
differentiable at a point in , then its
differential is represented by . In this case, the
linear transformation represented by is the best
linear approximation of near the point , in the sense that
where is a
quantity that approaches zero much faster than the
distance
Distance is a numerical or occasionally qualitative measurement of how far apart objects, points, people, or ideas are. In physics or everyday usage, distance may refer to a physical length or an estimation based on other criteria (e.g. "two co ...
between and does as approaches . This approximation specializes to the approximation of a scalar function of a single variable by its
Taylor polynomial of degree one, namely
In this sense, the Jacobian may be regarded as a kind of "
first-order derivative" of a vector-valued function of several variables. In particular, this means that the
gradient of a scalar-valued function of several variables may too be regarded as its "first-order derivative".
Composable differentiable functions and satisfy the
chain rule
In calculus, the chain rule is a formula that expresses the derivative of the Function composition, composition of two differentiable functions and in terms of the derivatives of and . More precisely, if h=f\circ g is the function such that h ...
, namely
for in .
The Jacobian of the gradient of a scalar function of several variables has a special name: the
Hessian matrix, which in a sense is the "
second derivative
In calculus, the second derivative, or the second-order derivative, of a function is the derivative of the derivative of . Informally, the second derivative can be phrased as "the rate of change of the rate of change"; for example, the secon ...
" of the function in question.
Jacobian determinant

If , then is a function from to itself and the Jacobian matrix is a
square matrix. We can then form its
determinant
In mathematics, the determinant is a Scalar (mathematics), scalar-valued function (mathematics), function of the entries of a square matrix. The determinant of a matrix is commonly denoted , , or . Its value characterizes some properties of the ...
, known as the Jacobian determinant. The Jacobian determinant is sometimes simply referred to as "the Jacobian".
The Jacobian determinant at a given point gives important information about the behavior of near that point. For instance, the
continuously differentiable function 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 ...
near a point if the Jacobian determinant at is non-zero. This is the
inverse function theorem. Furthermore, if the Jacobian determinant at is
positive, then preserves
orientation near ; if it is
negative, reverses orientation. The
absolute value
In mathematics, the absolute value or modulus of a real number x, is the non-negative value without regard to its sign. Namely, , x, =x if x is a positive number, and , x, =-x if x is negative (in which case negating x makes -x positive), ...
of the Jacobian determinant at gives us the factor by which the function expands or shrinks
volume
Volume is a measure of regions in 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) ...
s near ; this is why it occurs in the general
substitution rule.
The Jacobian determinant is used when making a
change of variables when evaluating a
multiple integral of a function over a region within its domain. To accommodate for the change of coordinates the magnitude of the Jacobian determinant arises as a multiplicative factor within the integral. This is because the -dimensional element is in general a
parallelepiped
In geometry, a parallelepiped is a three-dimensional figure formed by six parallelograms (the term ''rhomboid'' is also sometimes used with this meaning). By analogy, it relates to a parallelogram just as a cube relates to a square.
Three equiva ...
in the new coordinate system, and the -volume of a parallelepiped is the determinant of its edge vectors.
The Jacobian can also be used to determine the stability of
equilibria for
systems of differential equations by approximating behavior near an equilibrium point.
Inverse
According to the
inverse function theorem, the
matrix inverse
In linear algebra, an invertible matrix (''non-singular'', ''non-degenarate'' or ''regular'') is a square matrix that has an inverse. In other words, if some other matrix is multiplied by the invertible matrix, the result can be multiplied by an ...
of the Jacobian matrix of an
invertible function is the Jacobian matrix of the ''inverse'' function. That is, the Jacobian matrix of the inverse function at a point is
and the Jacobian determinant is
If the Jacobian is continuous and nonsingular at the point in , then is invertible when restricted to some
neighbourhood
A neighbourhood (Commonwealth English) or neighborhood (American English) is a geographically localized community within a larger town, city, suburb or rural area, sometimes consisting of a single street and the buildings lining it. Neighbourh ...
of . In other words, if the Jacobian determinant is not zero at a point, then the function is ''locally invertible'' near this point.
The (unproved)
Jacobian conjecture is related to global invertibility in the case of a polynomial function, that is a function defined by ''n''
polynomial
In mathematics, a polynomial is a Expression (mathematics), mathematical expression consisting of indeterminate (variable), indeterminates (also called variable (mathematics), variables) and coefficients, that involves only the operations of addit ...
s in ''n'' variables. It asserts that, if the Jacobian determinant is a non-zero constant (or, equivalently, that it does not have any complex zero), then the function is invertible and its inverse is a polynomial function.
Critical points
If is a
differentiable function
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 ...
, a ''critical point'' of is a point where the
rank
A rank is a position in a hierarchy. It can be formally recognized—for example, cardinal, chief executive officer, general, professor—or unofficial.
People Formal ranks
* Academic rank
* Corporate title
* Diplomatic rank
* Hierarchy ...
of the Jacobian matrix is not maximal. This means that the rank at the critical point is lower than the rank at some neighbour point. In other words, let be the maximal dimension of the
open ball
In mathematics, a ball is the solid figure bounded by a ''sphere''; it is also called a solid sphere. It may be a closed ball (including the boundary points that constitute the sphere) or an open ball (excluding them).
These concepts are defin ...
s contained in the image of ; then a point is critical if all
minors of rank of are zero.
In the case where , a point is critical if the Jacobian determinant is zero.
Examples
Example 1
Consider a function with given by
Then we have
and
The Jacobian matrix of is
and the Jacobian determinant is
Example 2: polar-Cartesian transformation
The transformation from
polar coordinates
In mathematics, the polar coordinate system specifies a given point (mathematics), point in a plane (mathematics), plane by using a distance and an angle as its two coordinate system, coordinates. These are
*the point's distance from a reference ...
to
Cartesian coordinates
In geometry, a Cartesian coordinate system (, ) in a plane is a coordinate system that specifies each point uniquely by a pair of real numbers called ''coordinates'', which are the signed distances to the point from two fixed perpendicular o ...
(''x'', ''y''), is given by the function with components
The Jacobian determinant is equal to . This can be used to transform integrals between the two coordinate systems:
Example 3: spherical-Cartesian transformation
The transformation from
spherical coordinates
In mathematics, a spherical coordinate system specifies a given point in three-dimensional space by using a distance and two angles as its three coordinates. These are
* the radial distance along the line connecting the point to a fixed point ...
to
Cartesian coordinates
In geometry, a Cartesian coordinate system (, ) in a plane is a coordinate system that specifies each point uniquely by a pair of real numbers called ''coordinates'', which are the signed distances to the point from two fixed perpendicular o ...
(''x'', ''y'', ''z''), is given by the function with components
The Jacobian matrix for this coordinate change is
The
determinant
In mathematics, the determinant is a Scalar (mathematics), scalar-valued function (mathematics), function of the entries of a square matrix. The determinant of a matrix is commonly denoted , , or . Its value characterizes some properties of the ...
is . Since is the volume for a rectangular differential volume element (because the volume of a rectangular prism is the product of its sides), we can interpret as the volume of the spherical
differential volume element
In mathematics, a volume element provides a means for integrating a function with respect to volume in various coordinate systems such as spherical coordinates and cylindrical coordinates. Thus a volume element is an expression of the form
\math ...
. Unlike rectangular differential volume element's volume, this differential volume element's volume is not a constant, and varies with coordinates ( and ). It can be used to transform integrals between the two coordinate systems:
Example 4
The Jacobian matrix of the function with components
is
This example shows that the Jacobian matrix need not be a square matrix.
Example 5
The Jacobian determinant of the function with components
is
From this we see that reverses orientation near those points where and have the same sign; the function is
locally In mathematics, a mathematical object is said to satisfy a property locally, if the property is satisfied on some limited, immediate portions of the object (e.g., on some ''sufficiently small'' or ''arbitrarily small'' neighborhoods of points).
P ...
invertible everywhere except near points where or . Intuitively, if one starts with a tiny object around the point and apply to that object, one will get a resulting object with approximately times the volume of the original one, with orientation reversed.
Other uses
Dynamical systems
Consider a
dynamical system
In mathematics, a dynamical system is a system in which a Function (mathematics), function describes the time dependence of a Point (geometry), point in an ambient space, such as in a parametric curve. Examples include the mathematical models ...
of the form
, where
is the (component-wise) derivative of
with respect to the
evolution parameter (time), and
is differentiable. If
, then
is a
stationary point
In mathematics, particularly in calculus, a stationary point of a differentiable function of one variable is a point on the graph of a function, graph of the function where the function's derivative is zero. Informally, it is a point where the ...
(also called a
steady state
In systems theory, a system or a process is in a steady state if the variables (called state variables) which define the behavior of the system or the process are unchanging in time. In continuous time, this means that for those properties ''p' ...
). By the
Hartman–Grobman theorem, the behavior of the system near a stationary point is related to the
eigenvalue
In linear algebra, an eigenvector ( ) or characteristic vector is a vector that has its direction unchanged (or reversed) by a given linear transformation. More precisely, an eigenvector \mathbf v of a linear transformation T is scaled by a ...
s of
, the Jacobian of
at the stationary point. Specifically, if the eigenvalues all have real parts that are negative, then the system is stable near the stationary point. If any eigenvalue has a real part that is positive, then the point is unstable. If the largest real part of the eigenvalues is zero, the Jacobian matrix does not allow for an evaluation of the stability.
Newton's method
A square system of coupled nonlinear equations can be solved iteratively by
Newton's method
In numerical analysis, the Newton–Raphson method, also known simply as Newton's method, named after Isaac Newton and Joseph Raphson, is a root-finding algorithm which produces successively better approximations to the roots (or zeroes) of a ...
. This method uses the Jacobian matrix of the system of equations.
Regression and least squares fitting
The Jacobian serves as a linearized
design matrix
In statistics and in particular in regression analysis, a design matrix, also known as model matrix or regressor matrix and often denoted by X, is a matrix of values of explanatory variables of a set of objects. Each row represents an individual o ...
in statistical
regression and
curve fitting
Curve fitting is the process of constructing a curve, or mathematical function, that has the best fit to a series of data points, possibly subject to constraints. Curve fitting can involve either interpolation, where an exact fit to the data is ...
; see
non-linear least squares
Non-linear least squares is the form of least squares analysis used to fit a set of ''m'' observations with a model that is non-linear in ''n'' unknown parameters (''m'' ≥ ''n''). It is used in some forms of nonlinear regression. The ...
. The Jacobian is also used in random matrices, moments, local sensitivity and statistical diagnostics.
See also
*
Center manifold
In the mathematics of evolving systems, the concept of a center manifold was originally developed to determine stability of degenerate equilibria. Subsequently, the concept of center manifolds was realised to be fundamental to mathematical modellin ...
*
Hessian matrix
*
Pushforward (differential)
In differential geometry, pushforward is a linear approximation of smooth maps (formulating manifold) on tangent spaces. Suppose that \varphi\colon M\to N is a smooth map between smooth manifolds; then the differential of \varphi at a point x, ...
Notes
References
Further reading
*
*
External links
*
MathworldA more technical explanation of Jacobians
{{Matrix classes
Multivariable calculus
Differential calculus
Generalizations of the derivative
Determinants
Matrices (mathematics)
Differential operators