Approximating Hyper-Rectangles: Learning and Pseudorandom Sets

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摘要

The PAC learning of rectangles has been studied because they have been found experimentally to yield excellent hypotheses for several applied learning problems. Also, pseudorandom sets for rectangles have been actively studied recently because (i) they are a subproblem common to the derandomization of depth-2 (DNF) circuits and derandomizing randomized logspace, and (ii) they approximate the distribution ofnindependent multivalued random variables. We present improved upper bounds for a class of such problems of “approximating” high-dimensional rectangles that arise in PAC learning and pseudo- randomness.

论文关键词:rectangles,machine learning,PAC learning,derandomization,pseudorandomness,multiple-instance learning,explicit constructions,Ramsey graphs,random graphs,sample complexity,approximations of distributions.

论文评审过程:Received 4 April 1997, Revised 14 May 1998, Available online 25 May 2002.

论文官网地址:https://doi.org/10.1006/jcss.1998.1593