Learning first-order definable concepts over structures of small degree

LICS '17: Proceedings of the 32nd Annual ACM/IEEE Symposium on Logic in Computer Science(2017)

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摘要
We consider a declarative framework for machine learning where concepts and hypotheses are defined by formulas of a logic over some background structure. We show that within this framework, concepts defined by first-order formulas over a background structure of at most polylogarithmic degree can be learned in polylogarithmic time in the "probably approximately correct" learning sense.
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关键词
first-order definable concept learning,declarative framework,machine learning,first-order formulas,background structure,polylogarithmic degree,polylogarithmic time,probably-approximately correct learning
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