BAYESIAN SEQUENTIAL LEARNING FROM INCOMPLETE DATA ON DECOMPOSABLE GRAPHICAL MODELS

    • Kuroda Masahiro
    • Department of Computer Science and Mathematics, Kurashiki University of Science and the Arts
    • Geng Zhi
    • Department of Probability and Statistics, Peking University
    • Niki Naoto
    • Department of Management Science, Science University of Tokyo

抄録

In this paper, we discuss the Bayesian sequential learning on probabilities from incomplete data in decomposable graphical models. We give exact formulas of the posterior distribution, and the posterior mean and the posterior second moment based on a hyper Dirichlet prior distribution and an incomplete observation. The posterior distribution is usually a mixture hyper Dirichlet distribution when there exist incomplete data. In order to approximate the mixture posterior, we choose a single hyper Dirichlet distribution which has the same mean and the same average variance sum as those of the exact posterior.

収録刊行物

Journal of the Japanese Society of Computational Statistics   [巻号一覧]

Journal of the Japanese Society of Computational Statistics 14(1), 11-29, 2001-12  [この号の目次]

日本計算機統計学会

参考文献:  17件

参考文献を見るにはログインが必要です。ユーザIDをお持ちでない方は新規登録してください。

被引用文献:  1件

被引用文献を見るにはログインが必要です。ユーザIDをお持ちでない方は新規登録してください。

プレビュー

プレビュー

各種コード

  • NII論文ID(NAID) :
    110001235638
  • NII書誌ID(NCID) :
    AA10823693
  • 本文言語コード :
    ENG
  • 資料種別 :
    ART
  • ISSN :
    09152350
  • 収録DB :
    CJP書誌  CJP引用  NII-ELS