The Strength of Weak Learnability

作者:Robert E. Schapire

摘要

This paper addresses the problem of improving the accuracy of an hypothesis output by a learning algorithm in the distribution-free (PAC) learning model. A concept class is learnable (or strongly learnable) if, given access to a source of examples of the unknown concept, the learner with high probability is able to output an hypothesis that is correct on all but an arbitrarily small fraction of the instances. The concept class is weakly learnable if the learner can produce an hypothesis that performs only slightly better than random guessing. In this paper, it is shown that these two notions of learnability are equivalent.

论文关键词:Machine learning, learning from examples, learnability theory, PAC learning, polynomial-time identification

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论文官网地址:https://doi.org/10.1023/A:1022648800760