In
mathematics, a matrix norm is a
vector norm in a
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 ...
whose elements (vectors) are
matrices (of given dimensions).
Preliminaries
Given a
field of either
real or
complex number
In mathematics, a complex number is an element of a number system that extends the real numbers with a specific element denoted , called the imaginary unit and satisfying the equation i^= -1; every complex number can be expressed in the for ...
s, let
be the -
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 ...
of matrices with
rows and
columns and entries in the field
. A matrix norm is a
norm on
.
This article will always write such norms with
double vertical bar
The vertical bar, , is a glyph with various uses in mathematics, computing, and typography. It has many names, often related to particular meanings: Sheffer stroke (in logic), pipe, bar, or (literally the word "or"), vbar, and others.
Usage
...
s (like so:
). Thus, the matrix norm is a
function that must satisfy the following properties:
For all scalars
and matrices
,
*
(''positive-valued'')
*
(''definite'')
*
(''absolutely homogeneous'')
*
(''sub-additive'' or satisfying the ''triangle inequality'')
The only feature distinguishing matrices from rearranged vectors is
multiplication. Matrix norms are particularly useful if they are also sub-multiplicative:
*
[The condition only applies when the product is defined, such as the case of square matrices ().]
Every norm on can be rescaled to be sub-multiplicative; in some books, the terminology ''matrix norm'' is reserved for sub-multiplicative norms.
Matrix norms induced by vector norms
Suppose a
vector norm on
and a vector norm
on
are given. Any
matrix induces a linear operator from
to
with respect to the standard basis, and one defines the corresponding ''induced norm'' or ''
operator norm'' or ''subordinate norm'' on the space
of all
matrices as follows:
where
denotes the
supremum
In mathematics, the infimum (abbreviated inf; plural infima) of a subset S of a partially ordered set P is a greatest element in P that is less than or equal to each element of S, if such an element exists. Consequently, the term ''greatest l ...
. This norm measures how much the mapping induced by
can stretch vectors.
Depending on the vector norms
,
used, notation other than
can be used for the operator norm.
Matrix norms induced by vector p-norms
If the
''p''-norm for vectors (
) is used for both spaces
and
, then the corresponding operator norm is:
These induced norms are different from the
"entry-wise" ''p''-norms and the
Schatten ''p''-norms for matrices treated below, which are also usually denoted by
In the special cases of
, the induced matrix norms can be computed or estimated by
which is simply the maximum absolute column sum of the matrix;
which is simply the maximum absolute row sum of the matrix.
For example, for
we have that
In the special case of
(the
Euclidean norm or
-norm for vectors), the induced matrix norm is the ''spectral norm''. (The two values do ''not'' coincide in infinite dimensions — see
Spectral radius for further discussion.) The spectral norm of a matrix
is the largest
singular value of
(i.e., the square root of the largest
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 denot ...
of the matrix
, where
denotes the
conjugate transpose
In mathematics, the conjugate transpose, also known as the Hermitian transpose, of an m \times n complex matrix \boldsymbol is an n \times m matrix obtained by transposing \boldsymbol and applying complex conjugate on each entry (the complex c ...
of
):
where
represents the largest singular value of matrix
. Also,
since
and similarly
by
singular value decomposition
In linear algebra, the singular value decomposition (SVD) is a factorization of a real or complex matrix. It generalizes the eigendecomposition of a square normal matrix with an orthonormal eigenbasis to any \ m \times n\ matrix. It is r ...
(SVD). There is another important inequality:
where
is the
Frobenius norm. Equality holds if and only if the matrix
is a rank-one matrix or a zero matrix. This inequality can be derived from the fact that the trace of a matrix is equal to the sum of its eigenvalues.
When
we have an equivalent definition for
as
. It can be shown to be equivalent to the above definitions using the
Cauchy–Schwarz inequality
The Cauchy–Schwarz inequality (also called Cauchy–Bunyakovsky–Schwarz inequality) is considered one of the most important and widely used inequalities in mathematics.
The inequality for sums was published by . The corresponding inequality f ...
.
Properties
Any operator norm is
consistent with the vector norms that induce it, giving
Suppose
;
; and
are operator norms induced by the respective pairs of vector norms
;
; and
. Then,
:
this follows from
and
Square matrices
Suppose
is an operator norm on the space of square matrices
induced by vector norms
and
.
Then, the operator norm is a sub-multiplicative matrix norm:
Moreover, any such norm satisfies the inequality
for all positive integers ''r'', where is the
spectral radius of . For
symmetric or
hermitian , we have equality in () for the 2-norm, since in this case the 2-norm ''is'' precisely the spectral radius of . For an arbitrary matrix, we may not have equality for any norm; a counterexample would be
which has vanishing spectral radius. In any case, for any matrix norm, we have the
spectral radius formula:
Consistent and compatible norms
A matrix norm
on
is called ''consistent'' with a vector norm
on
and a vector norm
on
, if:
for all
and all
. In the special case of and
,
is also called ''compatible'' with
.
All induced norms are consistent by definition. Also, any sub-multiplicative matrix norm on
induces a compatible vector norm on
by defining
.
"Entry-wise" matrix norms
These norms treat an
matrix as a vector of size
, and use one of the familiar vector norms. For example, using the ''p''-norm for vectors, , we get:
:
This is a different norm from the induced ''p''-norm (see above) and the Schatten ''p''-norm (see below), but the notation is the same.
The special case ''p'' = 2 is the Frobenius norm, and ''p'' = ∞ yields the maximum norm.
and norms
Let
be the columns of matrix
. From the original definition, the matrix
presents n data points in m-dimensional space. The
norm is the sum of the Euclidean norms of the columns of the matrix:
:
The
norm as an error function is more robust, since the error for each data point (a column) is not squared. It is used in
robust data analysis and
sparse coding.
For , the
norm can be generalized to the
norm as follows:
:
Frobenius norm
When for the
norm, it is called the Frobenius norm or the Hilbert–Schmidt norm, though the latter term is used more frequently in the context of operators on (possibly infinite-dimensional)
Hilbert space
In mathematics, Hilbert spaces (named after David Hilbert) allow generalizing the methods of linear algebra and calculus from (finite-dimensional) Euclidean vector spaces to spaces that may be infinite-dimensional. Hilbert spaces arise natu ...
. This norm can be defined in various ways:
:
where
are the
singular values of
. Recall that the
trace function
In linear algebra, the trace of a square matrix , denoted , is defined to be the sum of elements on the main diagonal (from the upper left to the lower right) of . The trace is only defined for a square matrix ().
It can be proved that the trace ...
returns the sum of diagonal entries of a square matrix.
The Frobenius norm is an extension of the Euclidean norm to
and comes from the
Frobenius inner product on the space of all matrices.
The Frobenius norm is sub-multiplicative and is very useful for
numerical linear algebra. The sub-multiplicativity of Frobenius norm can be proved using
Cauchy–Schwarz inequality
The Cauchy–Schwarz inequality (also called Cauchy–Bunyakovsky–Schwarz inequality) is considered one of the most important and widely used inequalities in mathematics.
The inequality for sums was published by . The corresponding inequality f ...
.
Frobenius norm is often easier to compute than induced norms, and has the useful property of being invariant under
rotations
Rotation, or spin, is the circular movement of an object around a '' central axis''. A two-dimensional rotating object has only one possible central axis and can rotate in either a clockwise or counterclockwise direction. A three-dimensional ...
(and
unitary operations in general). That is,
for any unitary matrix
. This property follows from the cyclic nature of the trace (
):
:
and analogously:
:
where we have used the unitary nature of
(that is,
).
It also satisfies
:
and
:
where
is the
Frobenius inner product, and Re is the real part of a complex number (irrelevant for real matrices)
Max norm
The max norm is the elementwise norm in the limit as goes to infinity:
:
This norm is not
sub-multiplicative.
Note that in some literature (such as
Communication complexity), an alternative definition of max-norm, also called the
-norm, refers to the factorization norm:
:
Schatten norms
The Schatten ''p''-norms arise when applying the ''p''-norm to the vector of
singular values of a matrix.
If the singular values of the
matrix
are denoted by ''σ
i'', then the Schatten ''p''-norm is defined by
:
These norms again share the notation with the induced and entry-wise ''p''-norms, but they are different.
All Schatten norms are sub-multiplicative. They are also unitarily invariant, which means that
for all matrices
and all
unitary matrices and
.
The most familiar cases are ''p'' = 1, 2, ∞. The case ''p'' = 2 yields the Frobenius norm, introduced before. The case ''p'' = ∞ yields the spectral norm, which is the operator norm induced by the vector 2-norm (see above). Finally, ''p'' = 1 yields the nuclear norm (also known as the ''trace norm'', or the
Ky Fan 'n'-norm), defined as
:
where
denotes a positive semidefinite matrix
such that
. More precisely, since
is a
positive semidefinite matrix, its
square root is well-defined. The nuclear norm
is a
convex envelope of the rank function
, so it is often used in
mathematical optimization
Mathematical optimization (alternatively spelled ''optimisation'') or mathematical programming is the selection of a best element, with regard to some criterion, from some set of available alternatives. It is generally divided into two subfi ...
to search for low rank matrices.
Monotone norms
A matrix norm
is called ''monotone'' if it is monotonic with respect to the
Loewner order. Thus, a matrix norm is increasing if
:
The Frobenius norm and spectral norm are examples of monotone norms.
Cut norms
Another source of inspiration for matrix norms arises from considering a matrix as the
adjacency matrix
In graph theory and computer science, an adjacency matrix is a square matrix used to represent a finite graph. The elements of the matrix indicate whether pairs of vertices are adjacent or not in the graph.
In the special case of a finite simple ...
of a
weighted,
directed graph.
The so-called "cut norm" measures how close the associated graph is to being
bipartite
Bipartite may refer to:
* 2 (number)
* Bipartite (theology), a philosophical term describing the human duality of body and soul
* Bipartite graph, in mathematics, a graph in which the vertices are partitioned into two sets and every edge has an en ...
:
where .
[ Note that Lovász rescales to lie in .] Equivalent definitions (up to a constant factor) impose the conditions ; ; or .
The cut-norm is equivalent to the induced operator norm , which is itself equivalent to the another norm, called the
Grothendieck norm.
To define the Grothendieck norm, first note that a linear operator is just a scalar, and thus extends to a linear operator on any . Moreover, given any choice of basis for and , any linear operator extends to a linear operator , by letting each matrix element on elements of via scalar multiplication. The Grothendieck norm is the norm of that extended operator; in symbols:
The Grothendieck norm depends on choice of basis (usually taken to be the
standard basis) and .
Equivalence of norms
For any two matrix norms
and
, we have that:
:
for some positive numbers ''r'' and ''s'', for all matrices
. In other words, all norms on
are ''equivalent''; they induce the same
topology
In mathematics, topology (from the Greek words , and ) is concerned with the properties of a geometric object that are preserved under continuous deformations, such as stretching, twisting, crumpling, and bending; that is, without closing ho ...
on
. This is true because the vector space
has the finite
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 ...
.
Moreover, for every vector norm
on
, there exists a unique positive real number
such that
is a sub-multiplicative matrix norm for every
.
A sub-multiplicative matrix norm
is said to be ''minimal'', if there exists no other sub-multiplicative matrix norm
satisfying
.
Examples of norm equivalence
Let
once again refer to the norm induced by the vector ''p''-norm (as above in the Induced Norm section).
For matrix
of
rank , the following inequalities hold:
[Roger Horn and Charles Johnson. ''Matrix Analysis,'' Chapter 5, Cambridge University Press, 1985. .]
*
*
*
*
*
Another useful inequality between matrix norms is
:
which is a special case of
Hölder's inequality
In mathematical analysis, Hölder's inequality, named after Otto Hölder, is a fundamental inequality between integrals and an indispensable tool for the study of spaces.
:Theorem (Hölder's inequality). Let be a measure space and let with . ...
.
See also
*
Dual norm
*
Logarithmic norm In mathematics, the logarithmic norm is a real-valued functional on operators, and is derived from either an inner product, a vector norm, or its induced operator norm. The logarithmic norm was independently introduced by Germund Dahlquist and Serge ...
Notes
References
{{reflist
Bibliography
*
James W. Demmel
James Weldon Demmel Jr. (born October 19, 1955) is an American mathematician and computer scientist, the ''Dr. Richard Carl Dehmel Distinguished Professor of Mathematics and Computer Science'' at the University of California, Berkeley.
In 1999, ...
, Applied Numerical Linear Algebra, section 1.7, published by SIAM, 1997.
* Carl D. Meyer, Matrix Analysis and Applied Linear Algebra, published by SIAM, 2000
*
John Watrous (computer scientist), John Watrous, Theory of Quantum Information
2.3 Norms of operators lecture notes, University of Waterloo, 2011.
*
Kendall Atkinson
Kendall may refer to:
Places Australia
* Kendall, New South Wales
United States
* Kendall, Florida
* Kendall, Kansas
*Kendall, Missouri
* Kendall, New York
*Kendall, Washington
* Kendall, Lafayette County, Wisconsin
*Kendall, Monroe County, Wi ...
, An Introduction to Numerical Analysis, published by John Wiley & Sons, Inc 1989
Norms (mathematics)
Linear algebra