求解软硬约束问题的一般随机方法

Henry A. Kautz, B. Selman, YueYen Jiang
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引用次数: 142

摘要

许多人工智能问题可以方便地编码为离散约束满足问题。通常情况下,并不是所有的CSP解决方案都是同样理想的,一般来说,人们对一组“首选”解决方案(例如,最小化某些成本函数的解决方案)感兴趣。可以通过在问题实例中加入“软”约束来编码首选项。我们展示了如何通过将问题编码为加权MAX-SAT的实例来处理硬约束和软约束(并建立一个模型,使构成问题实例的满足子句的权重总和最大化)。推广了一种局部搜索算法来求解加权MAX-SAT的可满足性。为了证明我们方法的有效性,我们给出了一组经过充分研究的网络斯坦纳树问题的编码实验结果。事实证明,这种方法与目前在运筹学中开发的一些最好的专门算法具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A general stochastic approach to solving problems with hard and soft constraints
Many AI problems can be conveniently encoded as discrete constraint satisfaction problems. It is often the case that not all solutions to a CSP are equally desirable | in general, one is interested in a set of \preferred" solutions (for example, solutions that minimize some cost function). Preferences can be encoded by incorporating \soft" constraints in the problem instance. We show how both hard and soft constraints can be handled by encoding problems as instances of weighted MAX-SAT ((nd-ing a model that maximizes the sum of the weights of the satissed clauses that make up a problem instance). We generalize a local-search algorithm for satissability to handle weighted MAX-SAT. To demonstrate the eeec-tiveness of our approach, we present experimental results on encodings of a set of well-studied network Steiner-tree problems. This approach turns out to be competitive with some of the best current specialized algorithms developed in operations research.
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