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De-Causalizing NAT-Modeled Bayesian Networks for Inference Efficiency

机译:解析NAT模型的贝叶斯网络推理效率

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Conditional independence encoded in Bayesian networks (BNs) avoids combinatorial explosion on the number of variables. However, BNs are still subject to exponential growth of space and inference time on the number of causes per effect variable in each conditional probability table (CPT). A number of space-efficient local models exist that allow efficient encoding of dependency between an effect and its causes, and can also be exploited for improved inference efficiency. We focus on the Non-Impeding Noisy-AND Tree (NIN-AND Tree or NAT) models due to its multiple merits. In this work, we develop a novel framework, de-causalization of NAT-modeled BNs, by which causal independence in NAT models can be exploited for more efficient inference. We demonstrate its exactness and efficiency impact on inference based on lazy propagation (LP).
机译:在贝叶斯网络(BNS)中编码的条件独立避免了对变量数量的组合爆炸。然而,BNS仍然在每个条件概率表(CPT)中的每个效果变量的原因次数上的空间和推理时间的指数增长。存在许多空间有效的本地模型,其允许有效地编码效果和其原因之间的依赖性,并且也可以利用改进推理效率。由于其多功能,我们专注于非阻碍噪声和树(nin和树或NAT)模型。在这项工作中,我们开发了一种新颖的框架,NAT模型BNS的脱判,可以利用NAT模型中的因果独立性来利用更有效的推断。我们证明了基于懒惰传播的推理(LP)对推理的精确性和效率影响。

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