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Simulation of Graphical Models for Multiagent Probabilistic Inference

机译:图形化多主体概率推理模型的仿真

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摘要

Multiply-sectioned Bayesian networks (MSBNs) extend Bayesian networks to graphical models for multiagent probabilistic reasoning. The empirical study of algorithms for manipulations of MSBNs (e.g., verification, compilation, and inference) requires experimental MSBNs. As engineering MSBNs in large problem domains requires significant knowledge and engineering effort, the authors explore automatic simulation of MSBNs. Due to the large domainover which an MSBN is defined and a set of constraints to be satisfied, a generate-and-test approach toward simulation has a high rate of failure. The authors present an alternative approach that treats the simulation process as a sequence of decisions. They constrain the space of each decision so that backtracking is minimized and the outcome is always a legal MSBN. A suite of algorithms that implements this approach is presented,and experimental results are shown.
机译:分段多重贝叶斯网络(MSBN)将贝叶斯网络扩展到图形模型,以进行多主体概率推理。对MSBN操纵算法(例如验证,编译和推理)的经验研究需要实验性MSBN。由于在大问题领域中工程MSBN需要大量知识和工程工作,因此作者探索了MSBN的自动仿真。由于定义了MSBN的范围很广,并且要满足一组约束,因此针对仿真的生成和测试方法的失败率很高。作者提出了一种将仿真过程视为一系列决策的替代方法。它们限制了每个决策的空间,从而最大程度地减少了回溯,并且结果始终是合法的MSBN。提出了一套实现该方法的算法,并显示了实验结果。

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