Maximum Box Problem on Stochastic Points

Given a finite set of weighted points in R d (where there can be negative weights), the maximum box problem asks for an axis-aligned rectangle (i.e., box) such that the sum of the weights of the points that it contains is maximized. We consider that each point of the input has a probability of being...

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Veröffentlicht in:Algorithmica 2021-12, Vol.83 (12), p.3741-3765
Hauptverfasser: Caraballo, Luis E., Pérez-Lantero, Pablo, Seara, Carlos, Ventura, Inmaculada
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Sprache:eng
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Zusammenfassung:Given a finite set of weighted points in R d (where there can be negative weights), the maximum box problem asks for an axis-aligned rectangle (i.e., box) such that the sum of the weights of the points that it contains is maximized. We consider that each point of the input has a probability of being present in the final random point set, and these events are mutually independent; then, the total weight of a maximum box is a random variable. We aim to compute both the probability that this variable is at least a given parameter, and its expectation. We show that even in d = 1 these computations are #P-hard, and give pseudo-polynomial time algorithms in the case where the weights are integers in a bounded interval. For d = 2 , we consider that each point is colored red or blue, where red points have weight + 1 and blue points weight - ∞ . The random variable is the maximum number of red points that can be covered with a box not containing any blue point. We prove that the above two computations are also #P-hard, and give a polynomial-time algorithm for computing the probability that there is a box containing exactly two red points, no blue point, and a given point of the plane.
ISSN:0178-4617
1432-0541
DOI:10.1007/s00453-021-00882-z