A goodness-of-fit test for logistic-normal models using nonparametric smoothing method |
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Authors: | Kuo-Chin Lin Yi-Ju Chen |
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Affiliation: | a Graduate Institute of Business and Management, Tainan University of Technology, Tainan, Taiwan b Department of Statistics, Tamkang University, Taipei, Taiwan |
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Abstract: | Logistic-normal models can be applied for analysis of longitudinal binary data. The aim of this article is to propose a goodness-of-fit test using nonparametric smoothing techniques for checking the adequacy of logistic-normal models. Moreover, the leave-one-out cross-validation method for selecting the suitable bandwidth is developed. The quadratic form of the proposed test statistic based on smoothing residuals provides a global measure for checking the model with categorical and continuous covariates. The formulae of expectation and variance of the proposed statistics are derived, and their asymptotic distribution is approximated by a scaled chi-squared distribution. The power performance of the proposed test for detecting the interaction term or the squared term of continuous covariates is examined by simulation studies. A longitudinal dataset is utilized to illustrate the application of the proposed test. |
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Keywords: | Goodness-of-fit Logistic-normal models Longitudinal binary data Nonparametric smoothing |
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