Incremental Construction of Projection Generalizing Neural Networks
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概要
- 論文の詳細を見る
In many practical situations in NN learning, training examples tend to be supplied one by one. In such situations, incremental learning seems more natural than batch learning in view of the learning methods of human beings. In this paper, we propose an incremental learning method in neural networks under the projection learning criterion. Although projection learning is a linear learning method, achieving the above goal is not straightforward since it involves redundant expressions of functions with over-complete bases, which is essentially related to pseudo biorthogonal bases (or frames). The proposed method provides exactly the same learning result as that obtained by batch learning. It is theoretically shown that the proposed method is more efficient in computation than batch learning.
- 社団法人電子情報通信学会の論文
- 2002-09-01
著者
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Ogawa Hidemitsu
The Department Of Computer Science Tokyo Institute Of Technology
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SUGIYAMA Masashi
the Department of Computer Science, Tokyo Institute of Technology
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Sugiyama Masashi
The Department Of Computer Science Tokyo Institute Of Technology
関連論文
- Incremental Construction of Projection Generalizing Neural Networks
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