On Worst-Case Learning in Relativized Heuristica

2021 IEEE 62nd Annual Symposium on Foundations of Computer Science (FOCS)(2021)

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摘要
A PAC learning model involves two worst-case requirements: a learner must learn all functions in a class on all example distributions. However, basing the hardness of learning on NP-hardness has remained a key challenge for decades. In fact, recent progress in computational complexity suggests the possibility that a weaker assumption might be sufficient for worst-case learning than the feasibility...
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关键词
Computer science,Heuristic algorithms,Computational modeling,Switches,Picture archiving and communication systems,Time complexity
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