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Decision Making by Credal Nets

机译:Credal Nets的决策制定

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摘要

Credal nets are probabilistic graphical models which extend Bayesian nets to cope with sets of distributions. This feature makes the model particularly suited for the implementation of classifiers and knowledge-based systems. When working with sets of (instead of single) probability distributions, the identification of the optimal option can be based on different criteria, some of them eventually leading to multiple choices. Yet, most of the inference algorithms for credal nets are designed to compute only the bounds of the posterior probabilities. This prevents some of the existing criteria from being used. To overcome this limitation, we present two simple transformations for credal nets which make it possible to compute decisions based on the maximality and E-admissibility criteria without any modification in the inference algorithms. We also prove that these decision problems have the same complexity of standard inference, being NP^PP-hard for general credal nets and NP-hard for polytrees.
机译:credal网络是概率图形模型,可扩展贝叶斯网络以应对分布集。此功能使该模型特别适合于分类器和基于知识的系统的实现。当处理一组(而不是单个)概率分布时,最佳选择的标识可以基于不同的标准,其中一些最终会导致多种选择。但是,大多数针对网络的推理算法仅设计为仅计算后验概率的范围。这会阻止使用某些现有条件。为了克服这个限制,我们提出了两个简单的网络化转换方法,这些转换方法可以在不对推理算法进行任何修改的情况下,基于最大性和E容许性标准来计算决策。我们还证明了这些决策问题具有相同的标准推论复杂性,对于一般的网络而言,NP ^ PP是困难的,而对于多树来说,NP是困难的。

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