広島大学大学院工学研究科研究報告 Volume 53 Issue 1
published_at 2004-12

誤差逆伝播学習法による自己組織化ロバスト主成分分析

Self-Organized Robust Principal Component Analysis by Back-Propagation Learning
Higuchi Isao
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KJ00004291002.pdf
Abstract
The purpose of this study is the suggestion of a self-organized back-propagation algorithm for robust principal component analysis. The self-organizing algorithm that discriminates the influence of data automatically is applied to learning of a sandglass type neural network.
Keywords
robust principal component analysis
neural networks
back-propagation
self-organizing rule