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Mixed deterministic and probabilistic networks

机译:确定性和概率混合网络

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The paper introduces mixed networks, a new graphical model framework for expressing and reasoning with probabilistic and deterministic information. The motivation to develop mixed networks stems from the desire to fully exploit the deterministic information (constraints) that is often present in graphical models. Several concepts and algorithms specific to belief networks and constraint networks are combined, achieving computational efficiency, semantic coherence and user-interface convenience. We define the semantics and graphical representation of mixed networks, and discuss the two main types of algorithms for processing them: inference-based and search-based. A preliminary experimental evaluation shows the benefits of the new model.
机译:本文介绍了混合网络,这是一个使用概率和确定性信息进行表达和推理的新图形模型框架。开发混合网络的动机源于对充分利用图形模型中经常出现的确定性信息(约束)的渴望。结合了特定于信念网络和约束网络的几种概念和算法,从而实现了计算效率,语义一致性和用户界面便利性。我们定义了混合网络的语义和图形表示,并讨论了处理它们的两种主要算法:基于推理和基于搜索。初步的实验评估表明了新模型的好处。

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