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The Neighborhood MCMC sampler for learning Bayesian networks

机译:用于学习贝叶斯网络的邻居MCMC采样器

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Getting stuck in local maxima is a problem that arises while learning Bayesian networks (BNs) structures. In this paper, we studied a recently proposed Markov chain Monte Carlo (MCMC) sampler, called the Neighbourhood sampler (NS), and examined how efficiently it can sample BNs when local maxima are present. We assume that a posterior distribution f(N, ED) has been defined, where D represents data relevant to the inference, N and E are the sets of nodes and directed edges, respectively. We illustrate the new approach by sampling from such a distribution, and inferring BNs. The simulations conducted in this paper show that the new learning approach substantially avoids getting stuck in local modes of the distribution, and achieves a more rapid rate of convergence, compared to other common algorithms e.g. the MCMC Metropolis-Hastings sampler.
机译:在当地的最大值陷入困境是在学习贝叶斯网络(BNS)结构的同时出现的问题。在本文中,我们研究了最近提出的Markov链蒙特卡罗(MCMC)采样器,称为邻域采样器(NS),并在存在局部最大值时检查它如何有效地采样BNS。我们假设已经定义了后部分布F(n,e d),其中d表示与推理相关的数据,n和e分别是节点和定向边的数据集。我们通过从这种分布和推断BNS采样来说明新方法。本文进行的模拟表明,与其他常见算法相比,新的学习方法基本上避免避免陷入局部的分布模式,并实现更快的收敛速率。 MCMC Metropolis-Hastings采样器。

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