Learning from a Population of Hypotheses
作者:Michael Kearns, H. Sebastian Seung
摘要
We introduce a new formal model in which a learning algorithm must combine a collection of potentially poor but statistically independent hypothesis functions in order to approximate an unknown target function arbitrarily well. Our motivation includes the question of how to make optimal use of multiple independent runs of a mediocre learning algorithm, as well as settings in which the many hypotheses are obtained by a distributed population of identical learning agents.
论文关键词:machine learning, computational learning theory, PAC learning, learning agents
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论文官网地址:https://doi.org/10.1023/A:1022855530995