超越星形——解耦搜索的广义拓扑

Daniel Gnad, Á. Torralba, Daniel Fiser
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引用次数: 1

摘要

解耦搜索通过划分变量来分解经典规划任务,从而使结果因素之间的依赖关系形成星形拓扑。在这种拓扑结构中,单个中心因子可以与一组叶因子任意交互。然而,叶子之间只能通过中心间接地相互作用。在这项工作中,我们推广了这种结构需求,并允许任意拓扑。组件不能重叠,即每个状态变量只分配给一个因素,但因素之间的相互作用不受限制。我们展示了这种泛化是如何与星型拓扑相联系的,这意味着这种新型分解解耦搜索的正确性。我们介绍了在给定的规划任务上自动识别这些拓扑的分解方法。根据经验,广义因式分解提高了解耦搜索在标准IPC基准测试中的适用性,并且与已知的因式分解方法相比具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beyond Stars - Generalized Topologies for Decoupled Search
Decoupled search decomposes a classical planning task by partitioning its variables such that the dependencies between the resulting factors form a star topology. In this topology, a single center factor can interact arbitrarily with a set of leaf factors. The leaves, however, can interact with each other only indirectly via the center. In this work, we generalize this structural requirement and allow arbitrary topologies. The components must not overlap, i.e., each state variable is assigned to exactly one factor, but the interaction between factors is not restricted. We show how this generalization is connected to star topologies, which implies the correctness of decoupled search with this novel type of decomposition. We introduce factoring methods that automatically identify these topologies on a given planning task. Empirically, the generalized factorings lead to increased applicability of decoupled search on standard IPC benchmarks, as well as to superior performance compared to known factoring methods.
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