On the Minimum Hitting Set of Bundles Problem
Angel, Eric; Bampis, Evripidis; Gourvès, Laurent (2008), On the Minimum Hitting Set of Bundles Problem, dans Fleischer, Rudolf; Xu, Jinhui, Algorithmic Aspects in Information and Management, 4th International Conference, AAIM 2008, Shanghai, China, June 23-25, 2008. Proceedings, springer : Berlin, p. 3-14. http://dx.doi.org/10.1007/978-3-540-68880-8_3
Type
Communication / ConférenceDate
2008Titre du colloque
4th International Conference on Algorithmic Aspects in Information and Management (AAIM 2008)Date du colloque
2008-06Ville du colloque
ShanghaïPays du colloque
ChineTitre de l'ouvrage
Algorithmic Aspects in Information and Management, 4th International Conference, AAIM 2008, Shanghai, China, June 23-25, 2008. ProceedingsAuteurs de l’ouvrage
Fleischer, Rudolf; Xu, JinhuiÉditeur
springer
Titre de la collection
Lecture Notes in Computer ScienceNuméro dans la collection
5034Ville d’édition
Berlin
Isbn
978-3-540-68865-5
Pages
3-14
Identifiant publication
Métadonnées
Afficher la notice complèteRésumé (EN)
We consider a natural generalization of the classical minimum hitting set problem, the minimum hitting set of bundles problem (mhsb) which is defined as follows. We are given a set TeX of n elements. Each element e i (i = 1, ...,n) has a non negative cost c i . A bundle b is a subset of TeX . We are also given a collection TeX of m sets of bundles. More precisely, each set S j (j = 1, ..., m) is composed of g(j) distinct bundles TeX . A solution to mhsb is a subset TeX such that for every TeX at least one bundle is covered, i.e. TeX for some l ∈ {1,2, ⋯ ,g(j)}. The total cost of the solution, denoted by TeX , is TeX . The goal is to find a solution with minimum total cost. We give a deterministic TeX -approximation algorithm, where N is the maximum number of bundles per set and M is the maximum number of sets an element can appear in. This is roughly speaking the best approximation ratio that we can obtain since, by reducing mhsb to the vertex cover problem, it implies that mhsb cannot be approximated within 1.36 when N = 2 and N − 1 − ε when N ≥ 3. It has to be noticed that the application of our algorithm in the case of the min k −sat problem matches the best known approximation ratio.Mots-clés
approximation algorithm; min k −sat; minimum hitting setPublications associées
Affichage des éléments liés par titre et auteur.
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Gourvès, Laurent; Bampis, Evripidis; Angel, Eric (2009) Article accepté pour publication ou publié
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Angel, Eric; Bampis, Evripidis; Gourvès, Laurent (2007) Document de travail / Working paper
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Angel, Eric; Bampis, Evripidis; Gourvès, Laurent (2003) Communication / Conférence
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Angel, Eric; Bampis, Evripidis; Gourvès, Laurent (2004) Article accepté pour publication ou publié
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Angel, Eric; Bampis, Evripidis; Gourvès, Laurent; Monnot, Jérôme (2005) Communication / Conférence