What can memorization learning do?

A. Hirabayashi, H. Ogawa
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引用次数: 3

Abstract

Memorization learning (ML) is a method for supervised learning which reduces the training errors only. However, it does not guarantee good generalization capability in principle. This observation leads to two problems: 1) to clarify the reason why good generalization capability is obtainable by ML; and 2) to clarify to what extent memorization learning can be used. Ogawa (1995) introduced the concept of 'admissibility' and provided a clear answer to the first problem. In this paper, we solve the second problem when training examples are noiseless. It is theoretically shown that ML can provide the same generalization capability as any learning method in 'the family of projection learning' when proper training examples are chosen.
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记忆学习能做什么?
记忆学习(ML)是一种监督学习方法,它只减少训练误差。但原则上不能保证良好的泛化能力。这一观察结果导致了两个问题:1)澄清为什么ML可以获得良好的泛化能力;2)明确记忆学习在多大程度上可以使用。Ogawa(1995)引入了“可采性”的概念,并对第一个问题提供了明确的答案。在本文中,我们解决了训练样例为无噪声时的第二个问题。理论上表明,当选择适当的训练样本时,ML可以提供与“投影学习家族”中的任何学习方法相同的泛化能力。
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