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    篇名/題名:Detecting Misspecification in the Random-Effects Structure of Cumulative Logit Models
    摘要:A common approach to analyzing longitudinal ordinal data is to apply generalized linear
    mixed models (GLMMs). The efficiency and validity of inference for parameters are affected by the random-effects distribution in GLMMs. A proposed test is developed based on the observed data and a reconstructed data set induced from the observed data for diagnosing the random-effects misspecification in cumulative logit models for longitudinal ordinal data, extending the idea presented by Huang (2009) for longitudinal binary data. The
    proposed test statistic has the quadratic form of the difference of maximum likelihood estimators between the observed data and the reconstructed data, and it follows a limiting chi-squared distribution when the model is correctly specified. The simulation studies
    are conducted to assess the performance of the proposed test, and a clinical trial example
    demonstrates the application of the proposed test.
    類型:期刊論文
    著作語言:英文
    關鍵詞:Generalized linear mixed models Longitudinal ordinal data Misspecification Reconstructed data
    作者:作者:
     林國欽、Yi-Ju Chen
    學校系所:企業管理系
    卷期:Computational Statistics & Data Analysis;vol. 92 卷
    頁碼:126-133