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Measuring the Hardness of Stochastic Sampling on Bayesian Networks with Deterministic Causalities: the k-Test

机译:测量具有确定性因果区的贝叶斯网络对随机取样的硬度:K检验

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Approximate Bayesian inference is NP-hard. Dagum and Luby defined the Local Variance Bound (LVB) to measure the approximation hardness of Bayesian inference on Bayesian networks, assuming the networks model strictly positive joint probability distributions, i.e. zero probabilities are not permitted. This paper introduces the k-test to measure the approximation hardness of inference on Bayesian networks with deterministic causalities in the probability distribution, i.e. when zero conditional probabilities are permitted. Approximation by stochastic sampling is a widely-used inference method that is known to suffer from inefficiencies due to sample rejection. The k-test predicts when rejection rates of stochastic sampling a Bayesian network will be low, modest, high, or when sampling is intractable.
机译:近似贝叶斯推论是NP-HARD。 Dagum和Luby定义了局部方差绑定(LVB),以测量贝叶斯网络对贝叶斯网络的近似硬度,假设网络模型严格正接合概率分布,即零概率不允许。本文介绍了k检验,以测量拜耳网络的推断近似硬度,在概率分布中具有确定性因果区,即允许零条条件概率。随机取样的近似是一种广泛使用的推理方法,已知由于样品排斥而遭受效率低下。 K-Test预测随机采样的拒绝率贝叶斯网络将是低,适度的,高,或者采样难以应变。

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