首页> 外文期刊>Australian & New Zealand journal of statistics >Exact or approximate inference in graphical models: why the choice is dictated by the treewidth, and how variable elimination can be exploited
【24h】

Exact or approximate inference in graphical models: why the choice is dictated by the treewidth, and how variable elimination can be exploited

机译:图形模型中的精确或近似推论:为什么选择由树宽决定,以及如何利用变量消除

获取原文
获取原文并翻译 | 示例
           

摘要

Probabilistic graphical models offer a powerful framework to account for the dependence structure between variables, which is represented as a graph. However, the dependence between variables may render inference tasks intractable. In this paper, we review techniques exploiting the graph structure for exact inference, borrowed from optimisation and computer science. They are built on the principle of variable elimination whose complexity is dictated in an intricate way by the order in which variables are eliminated. The so-called treewidth of the graph characterises this algorithmic complexity: low-treewidth graphs can be processed efficiently. The first point that we illustrate is therefore the idea that for inference in graphical models, the number of variables is not the limiting factor, and it is worth checking the width of several tree decompositions of the graph before resorting to the approximate method. We show how algorithms providing an upper bound of the treewidth can be exploited to derive a 'good' elimination order enabling to realise exact inference. The second point is that when the treewidth is too large, algorithms for approximate inference linked to the principle of variable elimination, such as loopy belief propagation and variational approaches, can lead to accurate results while being much less time consuming than Monte-Carlo approaches. We illustrate the techniques reviewed in this article on benchmarks of inference problems in genetic linkage analysis and computer vision, as well as on hidden variables restoration in coupled Hidden Markov Models.
机译:概率图形模型提供了一个强大的框架来说明变量之间的依存关系,并以图形表示。但是,变量之间的依赖性可能会使推理任务变得棘手。在本文中,我们回顾了利用图结构进行精确推理的技术,这些技术是从优化和计算机科学中借鉴而来的。它们基于变量消除的原理,其复杂性由消除变量的顺序以复杂的方式决定。图的所谓树宽就是这种算法的复杂性:低树宽图可以得到有效处理。因此,我们要说明的第一点是,对于图形模型的推理,变量的数量不是限制因素,在采用近似方法之前,值得检查图的几个树分解的宽度。我们展示了如何利用提供树宽上限的算法来导出“良好”的消除顺序,从而实现精确的推理。第二点是,当树宽太大时,与变量消除原理相关的近似推理算法(例如,循环信念传播和变分方法)可以产生准确的结果,同时比Monte-Carlo方法花费更少的时间。我们将在本文中对遗传连锁分析和计算机视觉中的推理问题的基准以及耦合的隐马尔可夫模型中的隐藏变量还原进行说明,以说明本文中介绍的技术。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号