首页> 外文学位 >Efficient inference algorithms for some probabilistic graphical models.
【24h】

Efficient inference algorithms for some probabilistic graphical models.

机译:用于某些概率图形模型的高效推理算法。

获取原文
获取原文并翻译 | 示例

摘要

The probabilistic graphical model framework provides an essential tool to reason coherently from limited and noisy observations. The framework has been used in an enormous range of application domains, which include: natural language processing, computer vision, bioinformatic, robot navigation and many more. We propose several inference algorithms for some probabilistic graphical models. For Bayesian network graphical models, we focus on the problem of overlapping clustering, where a data point is allowed to belong to multiple clusters. We present an overlapping clustering algorithm based on multiplicative mixture models. We analyze a general setting where each component of the multiplicative mixture is from an exponential family, and present an efficient alternating maximization algorithm to learn the model and infer overlapping clusters. We also propose a Bayesian Overlapping Subspace Clustering (BOSC) model which is a hierarchical generative model for matrices with potentially overlapping uniform sub-block structures. The BOSC model can also handle matrices with missing entries. We propose an EM-style algorithm based on approximate inference using Gibbs sampling and parameter estimation using coordinate descent for the BOSC model. We propose an EM-style algorithm based on approximate inference using Gibbs sampling and parameter estimation using coordinate descent for the BOSC model.;We also consider Markov random field graphical models and address the problem of maximum a posteriori (MAP) inference. We first show that the drought detection problem from the climate science domain can be formulated as a MAP inference problem and propose an automatic drought detection problem. We then present a parallel MAP inference algorithm called Bethe-ADMM based on two ideas: tree-decomposition of the graph and the alternating direction method of multipliers (ADMM). However, unlike the standard ADMM, we use an inexact ADMM augmented with a Bethe-divergence based proximal function, which makes each subproblem in ADMM easy to solve in parallel using the sum-product algorithm. We rigorously prove global convergence of Bethe-ADMM. The proposed algorithm is extensively evaluated on both synthetic and real datasets to illustrate its effectiveness. Further, the parallel Bethe-ADMM is shown to scale almost linearly with increasing number of cores.
机译:概率图形模型框架提供了必要的工具,可以根据有限且嘈杂的观测结果进行连贯的推理。该框架已在众多应用领域中使用,包括:自然语言处理,计算机视觉,生物信息学,机器人导航等。对于某些概率图形模型,我们提出了几种推理算法。对于贝叶斯网络图形模型,我们关注重叠集群的问题,在该集群中,一个数据点可以属于多个集群。我们提出一种基于乘法混合模型的重叠聚类算法。我们分析了乘法混合的每个成分都来自指数族的一般设置,并提出了一种有效的交替最大化算法来学习模型并推断出重叠的簇。我们还提出了贝叶斯重叠子空间聚类(BOSC)模型,该模型是具有潜在重叠的均匀子块结构的矩阵的层次生成模型。 BOSC模型还可以处理缺少条目的矩阵。针对BOSC模型,我们提出了一种基于Gibbs采样的近似推理和基于坐标下降的参数估计的EM风格算法。我们为BOSC模型提出了一种基于Gibbs采样的近似推理和使用坐标下降的参数估计的EM风格算法;我们还考虑了马尔可夫随机场图形模型并解决了最大后验(MAP)推理的问题。我们首先表明,可以将气候科学领域的干旱检测问题表述为MAP推理问题,并提出一个自动干旱检测问题。然后,我们基于两个思想提出一种称为Bethe-ADMM的并行MAP推理算法:图形的树分解和乘数的交替方向方法(ADMM)。但是,与标准ADMM不同,我们使用不精确的ADMM加上基于Bethe-散度的近端函数,这使得ADMM中的每个子问题都可以使用求和积算法轻松并行解决。我们严格证明Bethe-ADMM的全球融合。该算法在合成数据集和真实数据集上都得到了广泛评估,以说明其有效性。此外,显示出并行的Bethe-ADMM随着核心数量的增加几乎成线性比例。

著录项

  • 作者

    Fu, Qiang.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 146 p.
  • 总页数 146
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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