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Multi-layer Bayesian Network for Variable-Bound Inference

机译:用于可变绑定推理的多层贝叶斯网络

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摘要

Agent decision-making is an information-intensive activity. Its performance is affected by the availability of relevant information. Bayesian networks have provided a probabilistic estimate for uncertain information. However, for those decision problems where information is represented in predicates, Bayesian inferences are required to process the variable-bound relations across predicates. Multi-Layer Bayesian Network (MLBN) is an extension of the classical model of Bayesian networks with multiple layers of conditional probability tables, each corresponding to one specific variable binding. The MLBN has been implemented based on an agent architecture. Experiments have shown its capability of improving performance in an experience-based decision-making framework.
机译:代理决策是一种信息密集型活动。其表现受相关信息可用性的影响。贝叶斯网络为不确定信息提供了概率估算。然而,对于那些在谓词中表示信息的决策问题,贝叶斯推广需要处理跨谓词的可变关系。多层贝叶斯网络(MLBN)是具有多层条件概率表的贝叶斯网络经典模型的扩展,每个概率表对应于一个特定的可变绑定。已经基于代理架构实现了MLBN。实验表明了其在基于经验的决策框架中提高性能的能力。

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