Unconditional lower bounds for learning intersections of halfspaces

作者:Adam R. Klivans, Alexander A. Sherstov

摘要

We prove new lower bounds for learning intersections of halfspaces, one of the most important concept classes in computational learning theory. Our main result is that any statistical-query algorithm for learning the intersection of \(\sqrt{n}\) halfspaces in n dimensions must make \(2^{\varOmega (\sqrt{n})}\) queries. This is the first non-trivial lower bound on the statistical query dimension for this concept class (the previous best lower bound was n Ω(log n)). Our lower bound holds even for intersections of low-weight halfspaces. In the latter case, it is nearly tight.

论文关键词:Intersections of halfspaces, Halfspace learning, PAC learning, SQ learning, Statistical queries, Query learning, Lower bounds for learning, Polynomial threshold functions, Harmonic sieve

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论文官网地址:https://doi.org/10.1007/s10994-007-5010-1