Title of article
Representation theory and invariant neural networks Original Research Article
Author/Authors
Jeffrey Wood، نويسنده , , John Shawe-Taylor، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1995
Pages
28
From page
33
To page
60
Abstract
A feedforward neural network is a computational device used for pattern recognition. In many recognition problems, certain transformations exist which, when applied to a pattern, leave its classification unchanged. Invariance under a given group of transformations is therefore typically a desirable property of pattern classifiers. In this paper, we present a methodology, based on representation theory, for the construction of a neural network invariant under any given finite linear group. Such networks show improved generalization abilities and may also learn faster than corresponding networks without in-built invariance.
Journal title
Discrete Applied Mathematics
Serial Year
1995
Journal title
Discrete Applied Mathematics
Record number
884415
Link To Document