Matrix norm
A matrix norm is a norm on the vector space of all real or complex m-by-n matrices. These norms are used to measure the "sizes" of matrices, and allow to talk about limits of sequences and infinite series of matrices. Several different matrix norms ||.|| are in common use. The more important ones in the case m = n are compatible with matrix multiplication in the sense that
Suppose A=(aij) is an m-by-n matrix with entries from the field K (which is either R or C). The Frobenius norm of A is defined as
If norms on Km and Kn are given, then one defines the corresponding operator norm[?] on the space of m-by-n matrices as the following suprema:
The most "natural" of these operator norms is the one which arises from the Euclidean norms ||.||2 on
Km and Kn. It is unfortunately relatively difficult to compute; we have
The set of all n-by-n matrices, together with such a sub-multiplicative norm, is a Banach algebra.
where A* denotes the conjugate transpose of A and the trace function is used. This norm is very similar to the Euclidean norm on Kn and comes from an inner product on the space of all matrices; however, it is not sub-multiplicative for m=n.
If m = n and one uses the same norm on domain and range, then these operator norms are all sub-multiplicative and give rise to Banach algebras.
(see singular value). If we use the taxicab norm ||.||1 on Km and Kn, then we obtain the operator norm
and if we use the maximum norm ||.||∞ on Km and Kn, we get
The following inequalities obtain among the various discussed matrix norms for the m-by-n matrix A:
\frac{1}{\sqrt{n}}\Vert\,A\,\Vert_\infty \leq \Vert\,A\,\Vert_2 \leq \sqrt{m}\Vert\,A\,\Vert_\infty
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\frac{1}{\sqrt{m}}\Vert\,A\,\Vert_1 \leq \Vert\,A\,\Vert_2 \leq \sqrt{n}\Vert\,A\,\Vert_1
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\Vert\,A\,\Vert_2 \leq \Vert\,A\,\Vert_F\leq\sqrt{n}\Vert\,A\,\Vert_2
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