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Structured Bayesian Networks: From Inference to Learning with Routes

机译:结构化贝叶斯网络:从推理到学习路线

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Structured Bayesian networks (SBNs) are a recently proposed class of probabilistic graphical models which integrate background knowledge in two forms: conditional independence constraints and Boolean domain constraints. In this paper, we propose the first exact inference algorithm for SBNs, based on compiling a given SBN to a Probabilistic Sentential Decision Diagram (PSDD). We further identify a tractable subclass of SBNs, which have PSDDs of polynomial size. These SBNs yield a tractable model of route distributions, whose structure can be learned from GPS data, using a simple algorithm that we propose. Empirically, we demonstrate the utility of our inference algorithm, showing that it can be an order-of-magnitude more efficient than more traditional approaches to exact inference. We demonstrate the utility of our learning algorithm, showing that it can learn more accurate models and classifiers from GPS data.
机译:结构化贝叶斯网络(SBN)是最近提出的概率图形模型,以两种形式集成了背景知识:条件独立约束和布尔域约束。 在本文中,我们提出了基于编译给定SBN的SBN的第一种精确推断算法到概率的句子规则决策图(PSDD)。 我们进一步识别SBN的易易诊的子类,其具有多项式大小的PSDD。 这些SBN产生了一个易于分布的路由分布模型,其结构可以使用我们提出的简单算法从GPS数据中学习。 凭经验,我们展示了我们推理算法的效用,表明它可以是一个级数比更具传统推断的方法更有效。 我们展示了我们学习算法的效用,表明它可以从GPS数据学习更准确的模型和分类器。

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