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Improving DPOP with Branch Consistency for Solving Distributed Constraint Optimization Problems

机译:用分支一致性改进DPOP以解决分布式约束优化问题

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The DCOP model has gained momentum in recent years thanks to its ability to capture problems that are naturally distributed and cannot be realistically addressed in a centralized manner. Dynamic programming based techniques have been recognized to be among the most effective techniques for building complete DCOP solvers (e.g., DPOP). Unfortunately, they also suffer from a widely recognized drawback: their messages are exponential in size. Another limitation is that most current DCOP algorithms do not actively exploit hard constraints, which are common in many real problems. This paper addresses these two limitations by introducing an algorithm, called BrC-DPOP, that exploits arc consistency and a form of consistency that applies to paths in pseudo-trees to reduce the size of the messages. Experimental results shows that BrC-DPOP uses messages that are up to one order of magnitude smaller than DPOP, and that it can scale up well, being able to solve problems that its counterpart can not.
机译:由于DCOP模型能够捕获自然分布且无法集中解决的问题,因此近年来发展势头强劲。基于动态编程的技术已被认为是用于构建完整的DCOP求解器(例如DPOP)的最有效的技术。不幸的是,它们还遭受广泛公认的缺点:其消息的大小是指数级的。另一个限制是,当前大多数DCOP算法都无法主动利用硬约束,这在许多实际问题中很常见。本文通过介绍一种称为BrC-DPOP的算法来解决这两个限制,该算法利用弧的一致性和一种适用于伪树中路径的一致性形式来减小消息的大小。实验结果表明,BrC-DPOP使用的消息比DPOP小最多一个数量级,并且可以很好地扩展,能够解决其对等方无法解决的问题。

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