On the Relevance of Optimal Tree Decompositions for Constraint Networks

Philippe Jégou, Hélène Kanso, C. Terrioux
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引用次数: 3

Abstract

For the study and the solving of NP-hard problems, the concept of tree decomposition is nowadays a major topic in Computer Science, in Artificial Intelligence and particularly in Constraint Programming. It appears as a promising field for the theoretical study of numerous graphical models like Bayesian Networks or (Weighted) Constraint Networks, since it can ensure, under some hypothesis, the existence of polynomial time algorithms. This concept is also used in a wide range of applications. Recently, a real improvement in the practical computation of optimal tree decompositions has been observed, allowing new promising applications of this concept in real applications. In this paper, we first aim to analyze the real relevance of such optimal decompositions. We first set that a larger set of instances are now optimally decomposable in practice but using these algorithms on a practical level still constitutes a real difficulty. In a second time, we assess the impact of such optimal decompositions for solving these instances and note a discrepancy between the empirical results and what is expected from the complexity analysis. Finally, we discuss of the next investigations which are needed on this topic.
约束网络最优树分解的相关性研究
为了研究和解决np困难问题,树分解的概念是当今计算机科学、人工智能,特别是约束规划中的一个重要课题。对于许多图形模型,如贝叶斯网络或(加权)约束网络,它似乎是一个很有前途的理论研究领域,因为它可以在某些假设下确保多项式时间算法的存在。这个概念也被广泛应用。最近,在最优树分解的实际计算中已经观察到一个真正的改进,使得这个概念在实际应用中有了新的有前途的应用。在本文中,我们首先旨在分析这些最优分解的真实相关性。我们首先设定了一个更大的实例集现在在实践中是最优分解的,但是在实践层面上使用这些算法仍然构成一个真正的困难。在第二次,我们评估了这种最优分解对解决这些实例的影响,并注意到经验结果与复杂性分析预期之间的差异。最后,讨论了本课题需要进行的后续研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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