推论
统计模型
指数随机图模型
近似推理
数学
图形模型
计算机科学
应用数学
马尔科夫蒙特卡洛
理论计算机科学
指数族
统计推断
算法
数学优化
指数函数
人工智能
贝叶斯概率
统计
图形
数学分析
随机图
作者
Martin J. Wainwright,Michael I. Jordan
出处
期刊:Foundations and trends in machine learning
[Now Publishers]
日期:2007-01-01
被引量:3182
标识
DOI:10.1561/9781601981851
摘要
The formalism of probabilistic graphical models provides a unifying framework for capturing complex dependencies among random variables, and building large-scale multivariate statistical models. Graphical models have become a focus of research in many statistical, computational and mathematical fields, including bioinformatics, communication theory, statistical physics, combinatorial optimization, signal and image processing, information retrieval and statistical machine learning. Many problems that arise in specific instances-including the key problems of computing marginals and modes of probability distributions-are best studied in the general setting. Working with exponential family representations, and exploiting the conjugate duality between the cumulant function and the entropy for exponential families, Graphical Models, Exponential Families and Variational Inference develops general variational representations of the problems of computing likelihoods, marginal probabilities and most probable configurations. It describes how a wide variety of algorithms- among them sum-product, cluster variational methods, expectation-propagation, mean field methods, and max-product-can all be understood in terms of exact or approximate forms of these variational representations. The variational approach provides a complementary alternative to Markov chain Monte Carlo as a general source of approximation methods for inference in large-scale statistical models.
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