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Explaining Bayesian Networks Using Argumentation

机译:使用论证解释贝叶斯网络

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摘要

Qualitative and quantitative systems to deal with uncertainty coexist. Bayesian networks are a well known tool in probabilistic reasoning. For non-statistical experts, however, Bayesian networks may be hard to interpret. Especially since the inner workings of Bayesian networks are complicated they may appear as black box models. Argumentation models, on the contrary, emphasise the derivation of results. However, they have notorious difficulty dealing with probabilities. In this paper we formalise a two-phase method to extract probabilistically supported arguments from a Bayesian network. First, from a BN we construct a support graph, and, second, given a set of observations we build arguments from that support graph. Such arguments can facilitate the correct interpretation and explanation of the evidence modelled in the Bayesian network.
机译:处理不确定性共存的定性和定量系统。贝叶斯网络是概率推理的知名工具。然而,对于非统计专家来说,贝叶斯网络可能很难解释。特别是因为贝叶斯网络的内部工作复杂,他们可能会出现黑色盒式型号。论证模型,相反,强调结果的推导。然而,他们对处理概率有臭名昭着的困难。在本文中,我们正规化了一种两阶段方法,以从贝叶斯网络中提取概率支持的争论。首先,来自BN我们构建一个支持图,而第二个,给定了一组观察,我们从该支持图中构建参数。这些论点可以促进对贝叶斯网络中建模的证据的正确解释和解释。

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