Autor/a

Ansótegui Gil, Carlos José

Béjar Torres, Ramón

Fernàndez Camon, César

Mateu Piñol, Carles

Fecha de publicación

2013-09-17T15:53:39Z

2013-09-17T15:53:39Z

2007



Resumen

Tractable cases of the binary CSP are mainly divided in two classes: constraint language restrictions and constraint graph restrictions. To better understand and identify the hardest binary CSPs, in this work we propose methods to increase their hardness by increasing the balance of both the constraint language and the constraint graph. The balance of a constraint is increased by maximizing the number of domain elements with the same number of occurrences. The balance of the graph is defined using the classical definition from graph the- ory. In this sense we present two graph models; a first graph model that increases the balance of a graph maximizing the number of vertices with the same degree, and a second one that additionally increases the girth of the graph, because a high girth implies a high treewidth, an important parameter for binary CSPs hardness. Our results show that our more balanced graph models and constraints result in harder instances when compared to typical random binary CSP instances, by several orders of magnitude. Also we detect, at least for sparse constraint graphs, a higher treewidth for our graph models.

Tipo de documento

article
acceptedVersion

Lengua

Inglés

Materias y palabras clave

Intel·ligència artificial; CSP (Llenguatge de programació)

Publicado por

Association for the Advancement of Artificial Intelligence

Documentos relacionados

Versió postprint del document publicat a: http://www.aaai.org

Proceedings of the twenty-second National Conference on Artificial Intelligence, 2007, p. 161-166

Derechos

(c) Association for the Advancement of Artificial Intelligence, 2007

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