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Main Authors: Boros, Endre, Lee, Joonhee
Format: Preprint
Published: 2021
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Online Access:https://arxiv.org/abs/2110.10672
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author Boros, Endre
Lee, Joonhee
author_facet Boros, Endre
Lee, Joonhee
contents Hailperin (1965) introduced a linear programming formulation to a difficult family of problems, originally proposed by Boole (1854,1868). Hailperin's model is computationally still difficult and involves an exponential number of variables (in terms of a typical input size for Boole's problem). Numerous papers provided efficiently computable bounds for the minimum and maximum values of Hailperin's model by using aggregation that is a monotone linear mapping to a lower dimensional space. In many cases the image of the positive orthant is a subcone of the positive orthant in the lower dimensional space, and thus including some of the defining inequalities of this subcone can tighten up such an aggregation model, and lead to better bounds. Improving on some recent results, we propose a hierarchy of aggregations for Hailperin's model and a generic approach for the analysis of these aggregations. We obtain complete polyhedral descriptions of the above mentioned subcones and obtain significant improvements in the quality of the bounds.
format Preprint
id arxiv_https___arxiv_org_abs_2110_10672
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Boole's probability bounding problem, linear programming aggregations, and nonnegative quadratic pseudo-Boolean functions
Boros, Endre
Lee, Joonhee
Probability
Combinatorics
90C05, 60C05
Hailperin (1965) introduced a linear programming formulation to a difficult family of problems, originally proposed by Boole (1854,1868). Hailperin's model is computationally still difficult and involves an exponential number of variables (in terms of a typical input size for Boole's problem). Numerous papers provided efficiently computable bounds for the minimum and maximum values of Hailperin's model by using aggregation that is a monotone linear mapping to a lower dimensional space. In many cases the image of the positive orthant is a subcone of the positive orthant in the lower dimensional space, and thus including some of the defining inequalities of this subcone can tighten up such an aggregation model, and lead to better bounds. Improving on some recent results, we propose a hierarchy of aggregations for Hailperin's model and a generic approach for the analysis of these aggregations. We obtain complete polyhedral descriptions of the above mentioned subcones and obtain significant improvements in the quality of the bounds.
title Boole's probability bounding problem, linear programming aggregations, and nonnegative quadratic pseudo-Boolean functions
topic Probability
Combinatorics
90C05, 60C05
url https://arxiv.org/abs/2110.10672