首页> 外文会议>45th Annual Allerton Conference on Communication, Control, and Computing 2007 >Solving Constraint Satisfaction Problems through Belief Propagation-guided decimation
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Solving Constraint Satisfaction Problems through Belief Propagation-guided decimation

机译:通过信念传播指导的抽取来解决约束满意度问题

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Message passing algorithms have proved surprisingly successful in solving hard constraint satisfaction problems on sparse random graphs. In such applications, variables are fixed sequentially to satisfy the constraints. Message passing is run after each step. Its outcome provides an heuristic to make choices at next step. This approach has been referred to as 'decimation,' with reference to analogous procedures in statistical physics. The behavior of decimation procedures is poorly understood. Here we consider a simple randomized decimation algorithm based on belief propagation (BP), and analyze its behavior on random k-satisfiability formulae. In particular, we propose a tree model for its analysis and we conjecture that it provides asymptotically exact predictions in the limit of large instances. This conjecture is confirmed by numerical simulations.
机译:事实证明,消息传递算法在解决稀疏随机图上的硬约束满足问题方面出奇地成功。在这样的应用中,变量被顺序固定以满足约束条件。消息传递在每个步骤之后运行。其结果提供了在下一步进行选择的试探法。参照统计物理学中的类似过程,该方法被称为“抽取”。人们对抽取过程的行为知之甚少。在这里,我们考虑一种基于置信度传播(BP)的简单随机抽取算法,并根据随机k可满足性公式分析其行为。特别是,我们提出了一个树模型进行分析,并推测它在大实例的极限下提供了渐近精确的预测。这个猜想通过数值模拟得到了证实。

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