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Limited Information Goodness-of-fit Testing in Multidimensional Contingency Tables

机译:多维列联表中的有限信息拟合度测试

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摘要

We introduce a family of goodness-of-fit statistics for testing composite null hypotheses in multidimensional contingency tables. These statistics are quadratic forms in marginal residuals up to order r. They are asymptotically chi-square under the null hypothesis when parameters are estimated using any asymptotically normal consistent estimator. For a widely used item response model, when r is small and multidimensional tables are sparse, the proposed statistics have accurate empirical Type I errors, unlike Pearson’s X 2. For this model in nonsparse situations, the proposed statistics are also more powerful than X 2. In addition, the proposed statistics are asymptotically chi-square when applied to subtables, and can be used for a piecewise goodness-of-fit assessment to determine the source of misfit in poorly fitting models.
机译:我们介绍了一系列拟合优度统计数据,用于测试多维列联表中的复合零假设。这些统计量是直到r阶的边际残差的二次形式。当使用任何渐近正态一致估计量估计参数时,它们在零假设下渐近卡方。对于广泛使用的项目响应模型,当r较小且多维表稀疏时,与Pearson的X 2 不同,所提出的统计数据具有准确的经验I类错误。对于这种在稀疏情况下的模型,建议的统计量也比X 2 强大。此外,当应用于子表时,建议的统计量是渐近卡方的,并且可以用于分段拟合优度评估,以确定在拟合程度较差的模型中失配的根源。

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