首页> 外文学位 >Dirichlet process mixture models for Markov processes.
【24h】

Dirichlet process mixture models for Markov processes.

机译:马尔可夫过程的Dirichlet过程混合模型。

获取原文
获取原文并翻译 | 示例

摘要

Prediction of the future observations is an important practical issue for statisticians. When the data can be viewed as exchangeable, de Finneti's theorem concludes that, conditionally, the data can be modeled as independent and identically distributed (i.i.d.). The predictive distribution of the future observations given the present data is then given by the posterior expectation of the underlying density function given the observations. The Dirichlet process mixture of normal densities has been successfully used as a prior in the Bayesian density estimation problem. However, when the data arise over time, exchangeability, and therefore the conditional i.i.d. structure in the data is questionable. A conditional Markov model may be thought of as a more general, yet having sufficiently rich structure suitable for handling such data. The predictive density of the future observation is then given by the posterior expectation of the transition density given the observations. We propose a Dirichlet process mixture prior for the problem of Bayesian estimation of transition density. Appropriate Markov chain Monte Carlo (MCMC) algorithm for the computation of posterior expectation will be discussed. Because of an inherent non-conjugacy in the model, usual Gibbs sampling procedure used for the density estimation problem is hard to implement. We propose using the recently proposed “no-gaps algorithm” to overcome the difficulty. When the Markov model holds good, we show the consistency of the Bayes procedures in appropriate topologies by constructing appropriate uniformly exponentially consistent tests and extending the idea of Schwartz (1965) to Markov processes. Numerical examples show excellent agreement between asymptotic theory and the finite sample behavior of the posterior distribution.
机译:对于统计学家来说,未来观察的预测是一个重要的实际问题。当可以将数据视为可交换数据时,德芬尼定理得出结论,有条件地,可以将数据建模为独立且均匀分布(即i.d.)。在给定当前数据的情况下,对未来观测值的预测分布由给定观测值的基础密度函数的后验期望值给出。正常密度的Dirichlet过程混合物已成功用作贝叶斯密度估计问题的先验条件。但是,当数据随着时间的流逝而出现时,可交换性因而是有条件的。数据中的结构是有问题的。可以将条件马尔可夫模型视为一个更通用的模型,但具有适合处理此类数据的足够丰富的结构。然后,通过对给定观测值的过渡密度的后期望来给出未来观测值的预测密度。我们针对转变密度的贝叶斯估计问题提出了Dirichlet过程混合物。将讨论用于后验期望的适当的马尔可夫链蒙特卡罗(MCMC)算法。由于模型固有的非共轭性,因此难以执行用于密度估计问题的常规吉布斯采样程序。我们建议使用最近提出的“无间隙算法”来克服这一困难。当马尔可夫模型保持良好时,我们通过构造适当的均匀指数一致的检验并将Schwartz(1965)的思想扩展到马尔可夫过程来证明贝叶斯方法在适当拓扑结构中的一致性。数值算例表明渐近理论与后验分布的有限样本行为之间的极好的一致性。

著录项

  • 作者

    Tang, Yongqiang.;

  • 作者单位

    North Carolina State University.;

  • 授予单位 North Carolina State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 142 p.
  • 总页数 142
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 统计学;
  • 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