A Bayesian nonparametric topic model for repeated measured data : An application to prescription data

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  • 奥井, 佑
    九州大学病院 メディカル・インフォメーションセンター

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説明

Topic models are currently used in many fields, particularly for marketing or medical science data analysis, often where an individual subject is repeatedly measured. A topic tracking model(TTM) that can consider the persistency of topics of individual subjects has been already proposed. Although the TTM estimates several parameters for each timepoint through online learning, offline learning should be utilized for analyses of preexisting data sets. Additionally, when a topic model is used, the number of topics should be decided in advance. However, deciding an appropriate number of topics is often difficult. Therefore, we propose a TTM with offline learning and a Bayesian nonparametric TTM (BNPTTM) for time series data sets where data from individual subjects are repeated measures. The performance of the proposed topic model is evaluated using an actual prescription data set. Our results suggest that the TTM with offline learning has better predictive ability than the existing TTM, and the BNPTTM can deduce the number of topics from a given data set.

収録刊行物

  • Behaviormetrika

    Behaviormetrika 1-12, 2020-07-07

    The Behaviormetric Society of

詳細情報 詳細情報について

  • CRID
    1050580007680854016
  • NII論文ID
    120007099221
  • ISSN
    13496964
    03857417
  • HANDLE
    2324/4150683
  • 本文言語コード
    en
  • 資料種別
    journal article
  • データソース種別
    • IRDB
    • CiNii Articles

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