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Myths and Legends in Learning Classification Rules

机译:学习分类规则中的神话和传说

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This paper is a discussion of machine learning theory on empirically learningclassification rules. The paper proposes six myths in the machine learning community that address issues of bias, learning as search, computational learning theory, Occam's razor, 'universal' learning algorithms, and interactive learnings. Some of the problems raised are also addressed from a Bayesian perspective. The paper concludes by suggesting questions that machine learning researchers should be addressing both theoretically and experimentally.

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