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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >A Comparison of Algorithms for Inference and Learning in Probabilistic Graphical Models
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A Comparison of Algorithms for Inference and Learning in Probabilistic Graphical Models

机译:概率图形模型中推理和学习算法的比较

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摘要

Research into methods for reasoning under uncertainty is currently one of the most exciting areas of artificial intelligence, largely because it has recently become possible to record, store, and process large amounts of data. While impressive achievements have been made in pattern classification problems such as handwritten character recognition, face detection, speaker identification, and prediction of gene function, it is even more exciting that researchers are on the verge of introducing systems that can perform large-scale combinatorial analyses of data, decomposing the data into interacting components. For example, computational methods for automatic scene analysis are now emerging in the computer vision community. These methods decompose an input image into its constituent objects, lighting conditions, motion patterns, etc. Two of the main challenges are finding effective representations and models in specific applications and finding efficient algorithms for inference and learning in these models. In this paper, we advocate the use of graph-based probability models and their associated inference and learning algorithms. We review exact techniques and various approximate, computationally efficient techniques, including iterated conditional modes, the expectation maximization (EM) algorithm, Gibbs sampling, the mean field method, variational techniques, structured variational techniques and the sum-product algorithm ("loopy” belief propagation). We describe how each technique can be applied in a vision model of multiple, occluding objects and contrast the behaviors and performances of the techniques using a unifying cost function, free energy.
机译:当前,不确定性下的推理方法的研究是人工智能最令人兴奋的领域之一,这在很大程度上是因为最近它已经可以记录,存储和处理大量数据。尽管在模式分类问题(例如手写字符识别,面部检测,说话人识别和基因功能预测)上已经取得了令人瞩目的成就,但令人激动的是,研究人员即将推出可以进行大规模组合分析的系统数据,将数据分解为交互的组件。例如,计算机视觉界正在出现用于自动场景分析的计算方法。这些方法将输入图像分解成其组成对象,照明条件,运动模式等。两个主要挑战是在特定应用中找到有效的表示形式和模型,并在这些模型中找到用于推理和学习的有效算法。在本文中,我们提倡使用基于图的概率模型及其相关的推理和学习算法。我们回顾了精确的技术和各种近似的,计算有效的技术,包括迭代条件模式,期望最大化(EM)算法,吉布斯采样,均值场方法,变分技术,结构化变分技术和和积算法(“循环”信念)我们描述了每种技术如何应用​​于具有多个遮挡对象的视觉模型,并使用统一的成本函数,自由能来对比这些技术的行为和性能。

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