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PT-ISABB: A Hybrid Tree-based Complete Algorithm to Solve Asymmetric Distributed Constraint Optimization Problems

机译:PT-ISABB:一种基于混合树的完整算法,可以解决非对称分布式约束优化问题

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Asymmetric Distributed Constraint Optimization Problems (ADCOPs) have emerged as an important formalism in multi-agent community due to their ability to capture personal preferences. However, the existing search-based complete algorithms for ADCOPs can only use local knowledge to compute lower bounds, which leads to inefficient pruning and prohibits them from solving large scale problems. On the other hand, inference-based complete algorithms (e.g., DPOP) for Distributed Constraint Optimization Problems (DCOPs) require only a linear number of messages, but they cannot be directly applied into ADCOPs due to a privacy concern. Therefore, in the paper, we consider the possibility of combining inference and search to effectively solve ADCOPs at an acceptable loss of privacy. Specifically, we propose a hybrid complete algorithm called PT-ISABB which uses a tailored inference algorithm to provide tight lower bounds and a tree-based complete search algorithm to exhaust the search space. We prove the correctness of our algorithm and the experimental results demonstrate its superiority over other state-of-the-art complete algorithms.
机译:由于其捕获个人偏好的能力,非对称分布式约束优化问题(ADCOPS)已成为多社社区中的重要形式主义。然而,ADCOPS的现有搜索的完整算法只能使用本地知识来计算下限,这导致效率低估,并禁止它们解决大规模问题。另一方面,用于分布式约束优化问题(DCOPS)的基于推断的完整算法(例如,DPOP)只需要线性数量的消息,但由于隐私问题,它们不能直接应用于ADCOPS。因此,在本文中,我们考虑在可接受的隐私丧失中有效地解决ADCOPS的可能性结合推理和搜索。具体而言,我们提出了一种称为PT-ISABB的混合完整算法,它使用定制推理算法来提供紧密的下限和基于树的完整搜索算法来排出搜索空间。我们证明了我们的算法的正确性,实验结果表明其在其他最先进的完整算法上的优越性。

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