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Reasoning and Decisions in Probabilistic Graphical Models -- A Unified Framework.

机译:概率图形模型中的推理和决策-统一框架。

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摘要

Probabilistic graphical models such as Markov random fields, Bayesian networks and decision networks (a.k.a. influence diagrams) provide powerful frameworks for representing and exploiting dependence structures in complex systems. However, making predictions or decisions using graphical models involve challenging computational problems of optimization and/or estimation in high dimensional spaces. These include combinatorial optimization tasks such as maximum a posteriori (MAP), which finds the most likely configuration, or marginalization tasks that calculate the normalization constants or marginal probabilities. Even more challenging tasks require a hybrid of both: marginal MAP tasks find the optimal MAP prediction while marginalizing over missing information or latent variables, while decision-making problems search for optimal policies over decisions in single- or multi-agent systems, in order to maximize expected utility in uncertain environments.;All these problems are generally NP-hard, creating a need for efficient approximations. The last two decades have witnessed significant progress on traditional optimization and marginalization problems, especially via the development of variational message passing algorithms. However, there has been less progress on the more challenging marginal MAP and decision-making problems.;This thesis presents a unified variational representation for all these problems. Based on our framework, we derive a class of efficient algorithms that combines the advantages of several existing algorithms, resulting in improved performance on traditional marginalization and optimization tasks. More importantly, our framework allows us to easily extend most or all existing variational algorithms to hybrid inference and decision-making tasks, and significantly improves our ability to solve these difficult problems. In particular, we propose a spectrum of efficient belief propagation style algorithms with "message passing" forms, which are simple, fast and amenable to parallel or distributed computation. We also propose a set of convergent algorithms based on proximal point methods, which have the nice form of transforming the hybrid inference problem into a sequence of standard marginalization problems. We show that our algorithms significantly outperform existing approaches in terms of both empirical performance and theoretical properties.
机译:诸如Markov随机场,贝叶斯网络和决策网络(也称为影响图)之类的概率图形模型为表示和利用复杂系统中的依存结构提供了强大的框架。但是,使用图形模型进行预测或决策涉及高维空间中优化和/或估计的计算难题。这些包括组合优化任务,例如找到最可能的配置的最大后验(MAP)或计算归一化常数或边际概率的边际化任务。更具挑战性的任务需要将两者混合在一起:边际MAP任务找到最佳MAP预测,同时边际化缺失的信息或潜在变量,而决策问题则在单人或多人系统中寻找最优的决策策略。在不确定的环境中最大化预期效用。;所有这些问题通常都是NP难解的,因此需要有效的近似。在过去的二十年中,特别是通过开发可变消息传递算法,见证了传统优化和边缘化问题的重大进展。但是,在更具挑战性的边际MAP和决策问题上进展甚微。本文为所有这些问题提供了统一的变分表示。基于我们的框架,我们推导出了一类有效的算法,该算法结合了几种现有算法的优势,从而提高了传统边缘化和优化任务的性能。更重要的是,我们的框架使我们能够轻松地将大多数或所有现有的变分算法扩展到混合推理和决策任务,并显着提高了我们解决这些难题的能力。特别是,我们提出了一系列具有“消息传递”形式的有效信念传播样式算法,这些算法简单,快速并且适合于并行或分布式计算。我们还提出了一组基于近点方法的收敛算法,该算法具有将混合推理问题转换为一系列标准边际化问题的良好形式。我们证明,在经验性能和理论特性方面,我们的算法均明显优于现有方法。

著录项

  • 作者

    Liu, Qiang.;

  • 作者单位

    University of California, Irvine.;

  • 授予单位 University of California, Irvine.;
  • 学科 Computer science.;Artificial intelligence.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 258 p.
  • 总页数 258
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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