Boosting and hard-core sets (1999)
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| Venue: | In Proceedings of the Fortieth Annual Symposium on Foundations of Computer Science |
| Citations: | 36 - 8 self |
BibTeX
@INPROCEEDINGS{Klivans99boostingand,
author = {Adam R. Klivans and Rocco A. Servedio},
title = {Boosting and hard-core sets},
booktitle = {In Proceedings of the Fortieth Annual Symposium on Foundations of Computer Science},
year = {1999},
pages = {624--633}
}
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Abstract
This paper connects two fundamental ideas from theoretical computer science: hard-core set construction, a type of hardness amplification from computational complexity, and boosting, a technique from computational learning theory. Using this connection we give fruitful applications of complexity-theoretic techniques to learning theory and vice versa. We show that the hard-core set construction of Impagliazzo [15], which establishes the existence of distributions under which boolean functions are highly inapproximable, may be viewed as a boosting algorithm. Using alternate boosting methods we give an improved bound for hard-core set construction which matches known lower bounds from boosting and thus is optimal within this class of techniques. We then show how to apply techniques from [15] to give a new version of Jackson’s celebrated Harmonic Sieve algorithm for learning DNF formulae under the uniform distribution using membership queries. Our new version has a significant asymptotic improvement in running time. Critical to our arguments is a careful analysis of the distributions which are employed in both boosting and hard-core set constructions.







