MapReduce guided approximate inference over graphical models

Ahsanul Haque, Swarup Chandra, L. Khan, M. Baron
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引用次数: 1

Abstract

A graphical model represents the data distribution of a data generating process and inherently captures its feature relationships. This stochastic model can be used to perform inference, to calculate posterior probabilities, in various applications such as classification. Exact inference algorithms are known to be intractable on large networks due to exponential time and space complexity. Approximate inference algorithms are instead widely used in practice to overcome this constraint, with a trade off in accuracy. Stochastic sampling is one such method where an approximate probability distribution is empirically evaluated using various sampling techniques. However, these algorithms may still suffer from scalability issues on large and complex networks. To address this challenge, we have designed and implemented several MapReduce based distributed versions of a specific type of approximate inference algorithm called Adaptive Importance Sampling (AIS). We compare and evaluate the proposed approaches using benchmark networks. Experimental result shows that our approach achieves significant scaleup and speedup compared to the sequential algorithm, while achieving similar accuracy asymptotically.
MapReduce在图形模型上引导近似推理
图形模型表示数据生成过程的数据分布,并固有地捕获其特征关系。这种随机模型可用于执行推理,计算后验概率,在分类等各种应用中。由于时间和空间的指数复杂度,精确的推理算法在大型网络上是难以处理的。近似推理算法在实践中被广泛使用来克服这一限制,在精度上进行了权衡。随机抽样就是这样一种方法,其中使用各种抽样技术对近似概率分布进行经验评估。然而,这些算法在大型和复杂的网络上仍然存在可伸缩性问题。为了应对这一挑战,我们设计并实现了几种基于MapReduce的分布式版本的特定类型的近似推理算法,称为自适应重要性采样(AIS)。我们使用基准网络比较和评估提出的方法。实验结果表明,与序列算法相比,我们的方法获得了显著的放大和加速,同时渐近地获得了相似的精度。
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