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XOR has no local minima: A case study in neural network error surface analysis

✍ Scribed by Leonard G.C. Hamey


Book ID
104348813
Publisher
Elsevier Science
Year
1998
Tongue
English
Weight
158 KB
Volume
11
Category
Article
ISSN
0893-6080

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✦ Synopsis


This paper presents a case study of the analysis of local minima in feedforward neural networks. Firstly, a new methodology for analysis is presented, based upon consideration of trajectories through weight space by which a training algorithm might escape a hypothesized local minimum. This analysis method is then applied to the well known XOR (exclusive-or) problem, which has previously been considered to exhibit local minima. The analysis proves the absence of local minima, eliciting significant aspects of the structure of the error surface. The present work is important for the study of the existence of local minima in feedforward neural networks, and also for the development of training algorithms which avoid or escape entrapment in local minima.