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Uncertainty Reasoning for Probabilistic Petri Nets via Bayesian Networks

机译:贝叶斯网络的概率培养网的不确定性推理

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This paper exploits extended Bayesian networks for uncertainty reasoning on Petri nets, where firing of transitions is probabilistic. In particular, Bayesian networks are used as symbolic representations of probability distributions, modelling the observera??s knowledge about the tokens in the net. The observer can study the net by monitoring successful and failed steps. An update mechanism for Bayesian nets is enabled by relaxing some of their restrictions, leading to modular Bayesian nets that can conveniently be represented and modified. As for every symbolic representation, the question is how to derive information - in this case marginal probability distributions - from a modular Bayesian net. We show how to do this by generalizing the known method of variable elimination. The approach is illustrated by examples about the spreading of diseases (SIR model) and information diffusion in social networks. We have implemented our approach and provide runtime results.
机译:本文利用延长贝叶斯网络在培养网上的不确定性推理,其中过渡的射击是概率。特别是,贝叶斯网络被用作概率分布的象征性表示,对网上令牌的知识建模。观察者可以通过监控成功和失败的步骤来研究网络。通过放宽一些限制,使贝叶斯网的更新机制是可以方便地被代表和修改的模块化贝叶斯网。至于每个符号表示,问题是如何派生信息 - 在这种情况下,边际概率分布 - 来自模块化贝叶斯网。我们展示了如何通过概括已知的可变消除方法来执行此操作。这些方法是通过关于疾病的扩展(SIR模型)和社交网络中信息扩散的示例来说明的方法。我们已经实施了我们的方法并提供运行时结果。

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