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Optimal Polynomial-time Estimators: A Bayesian Notion of Approximation Algorithm.

Journal Article Number 4 Logic in Computer Science

Abstract

We introduce a new concept of approximation applicable to decision problems and functions, inspired by Bayesian probability. From the perspective of a Bayesian reasoner with limited computational resources, the answer to a problem that cannot be solved exactly is uncertain and therefore should be described by a random variable. It thus should make sense to talk about the expected value of this random variable, an idea we formalize in the language of averagecase complexity theory by introducing the concept of “optimal polynomial-time estimators.” We prove some existence theorems and completeness results, and show that optimal polynomial-time estimators exhibit many parallels with “classical” probability theory.

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Context

Venue
IfCoLog Journal of Logics and their Applications
Archive span
2014-2026
Indexed papers
633
Paper id
142319023709517038