システム制御情報学会 研究発表講演会講演論文集
第47回システム制御情報学会研究発表講演会
会議情報
追加学習機能を有するRBFネットワークの学習高速法
岡本 圭介小澤 誠一阿部 重夫
著者情報
会議録・要旨集 フリー

p. 6059

詳細
抄録
As an incremental learning model, we have proposed Resource Allocating Network with Long Term Memory (RAN-LTM). In RAN-LTM, not only a new training sample but also some memory items stored in Long-Term Memory are trained based on a gradient descent method. The gradient descent method is generally slow and tends to be fallen into local minima. To improve these problems, we propose a fast incremental learning of RAN-LTM based on the linear method. In this algorithm, centers of basis functions are not trained but selected based on the output errors. A distinctive feature of the proposed model is that this model dose not need so much memory capacity. To evaluate the performance of our proposed model, we apply it to some function approximation problems. From the experimental results, it is verified that the proposed model can learn fast and accurately unless incremental learning is conducted over a long period of time.
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© 2003 システム制御情報学会
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