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A Scalable Method for Multiagent Constraint Optimization

机译:多主体约束优化的可扩展方法

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摘要

We present in this paper a new, complete method for distributed constraint optimization, based on dynamic programming. It is a utility propagation method, inspired by the sum-product algorithm, which is correct only for tree-shaped constraint networks. In this paper, we show how to extend that algorithm to arbitrary topologies using a pseudotree arrangement of the problem graph. Our algorithm requires a linear number of messages, whose maximal size depends on the induced width along the particular pseudotree chosen. We compare our algorithm with backtracking algorithms, and present experimental results. For some problem types we report orders of magnitude fewer messages, and the ability to deal with arbitrarily large problems. Our algorithm is formulated for optimization problems, but can be easily applied to satisfaction problems as well.
机译:我们在本文中提出了一种基于动态规划的完整的分布式约束优化新方法。它是一种实用传播方法,受求和积算法的启发,仅对树形约束网络正确。在本文中,我们展示了如何使用问题图的伪树结构将该算法扩展到任意拓扑。我们的算法需要线性数量的消息,其最大大小取决于沿着所选的特定伪树的感应宽度。我们将我们的算法与回溯算法进行比较,并给出实验结果。对于某些问题类型,我们报告的消息数量减少了几个数量级,并且能够处理任意大问题。我们的算法是针对优化问题制定的,但也可以轻松地应用于满意度问题。

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