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Main Author: Viazminsky, C. P.
Format: Preprint
Published: 2002
Subjects:
Online Access:https://arxiv.org/abs/math/0210167
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author Viazminsky, C. P.
author_facet Viazminsky, C. P.
contents The necessary and sufficient conditions for a function to be totally or partially separable are derived. It is shown that a function is totally separable if and only if each component of the gradient vector of depends only on the corresponding variable. The conditions of separability are expressed neatly in terms of the matrix which has to be diagonal if the function is to be totally separable, and has to assume a diagonal block form in order that the function is partially separable. The conditions of separability are also given without using derivatives. For polynomials, the conditions of separability are shown to hold if and only if the product of the first column and the first row of the coefficients matrix is equal to the matrix itself. This promotes an easy computational scheme for checking, and actually carrying out, variable separation.
format Preprint
id arxiv_https___arxiv_org_abs_math_0210167
institution arXiv
publishDate 2002
record_format arxiv
spellingShingle On Separation of Variables
Viazminsky, C. P.
Numerical Analysis
The necessary and sufficient conditions for a function to be totally or partially separable are derived. It is shown that a function is totally separable if and only if each component of the gradient vector of depends only on the corresponding variable. The conditions of separability are expressed neatly in terms of the matrix which has to be diagonal if the function is to be totally separable, and has to assume a diagonal block form in order that the function is partially separable. The conditions of separability are also given without using derivatives. For polynomials, the conditions of separability are shown to hold if and only if the product of the first column and the first row of the coefficients matrix is equal to the matrix itself. This promotes an easy computational scheme for checking, and actually carrying out, variable separation.
title On Separation of Variables
topic Numerical Analysis
url https://arxiv.org/abs/math/0210167