Active Learning for Optimal Generalization in Trigonometric Polynomial Models
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概要
- 論文の詳細を見る
In this paper, we consider the problem of active learning, and give a necessary and sufficient condition of sample points for the optimal generalization capability. By utilizing the properties of pseudo orthogonal bases, we clarify the mechanism of achieving the optimal generalization capability. We also show that the condition does not only provide the optimal generalization capability but also reduces the computational complexity and memory required to calculate learning result functions. Based on the optimality condition, we give design methods of optimal sample points for trigonometric polynomial models. Finally, the effectiveness of the proposed active learning method is demonstrated through computer simulations.
- 社団法人電子情報通信学会の論文
- 2001-09-01
著者
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Sugiyama M
Tokyo Inst. Technol. Tokyo Jpn
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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
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- Active Learning for Optimal Generalization in Trigonometric Polynomial Models