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Highlights 2021

Learning Union of Integer Hypercubes with Queries

Conference Abstract SESSION 20B: Learning Logic in Computer Science · Theoretical Computer Science

Abstract

We study the problem of actively learning a finite union of integer (axis-aligned) hypercubes over the d-dimensional integer lattice, i. e. , whose edges are parallel to the coordinate axes. This is a natural generalization of the classic problem in the computational learning theory of learning rectangles. We provide a learning algorithm with access to a minimally adequate teacher (i. e. membership and equivalence oracles) that solves this problem in polynomial-time, for any fixed dimension d. Over a non-fixed dimension, the problem subsumes the problem of learning DNF boolean formulas, a central open problem in the field. We have also provided extensions to handle infinite hypercubes in the union, as well as showing how subset queries could improve the performance of the learning algorithm in practice. Our problem has a natural application to the problem of monadic decomposition of quantifier-free integer linear arithmetic formulas, which has been actively studied in recent years. In particular, a finite union of integer hypercubes correspond to a finite disjunction of monadic predicates over integer linear arithmetic (without modulo constraints). Our experiments suggest that our learning algorithms substantially outperform the existing algorithms. Joint work with Oliver Markgraf and Anthony W. Lin, accepted for publication at CAV2021.

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Context

Venue
Highlights of Logic, Games and Automata
Archive span
2013-2025
Indexed papers
1236
Paper id
772837586468470196