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6 - Probabilistic Learning and Boolean Functions

from Part III - Learning Theory and Cryptography

Published online by Cambridge University Press:  05 June 2013

Martin Anthony
Affiliation:
London School of Economics and Political Science
Yves Crama
Affiliation:
Université de Liège, Belgium
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Summary

Introduction

This chapter explores the learnability of Boolean functions. Broadly speaking, the problem of interest is how to infer information about an unknown Boolean function given only information about its values on some points, together with the information that it belongs to a particular class of Boolean functions. This broad description can encompass many more precise formulations, but here we focus on probabilistic models of learning, in which the information about the function value on points is provided through its values on some randomly drawn sample, and in which the criteria for successful “learning” are defined using probability theory. Other approaches, such as “exact query learning” (see [1, 18, 20] and Chapter 7 in this volume, for instance) and “specification,” “testing,” or “learning with a helpful teacher” (see [12, 4, 16, 21, 26]) are possible, and particularly interesting in the context of Boolean functions. Here, however, we focus on probabilistic models and aim to give a fairly thorough account of what can be said in two such models.

In the probabilistic models discussed, there are two separate, but linked, issues of concern. First, there is the question of how much information is needed about the values of a function on points before a good approximation to the function can be found. Second, there is the question of how, algorithmically, we might find a good approximation to the function. These two issues are usually termed the sample complexity and computational complexity of learning.

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Publisher: Cambridge University Press
Print publication year: 2010

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