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Model Selection for the Trend Vector Model

机译:趋势向量模型的模型选择

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摘要

Model selection is an important component of data analysis. This study focuses on issues of model selection for the trend vector model, a model for the analysis of longitudinal multinomial outcomes. The trend vector model is a so-called marginal model, focusing on population averaged evolutions over time. A quasi-likelihood method is employed to obtain parameter estimates. Such an optimization function in theory invalidates likelihood-based statistics, such as the likelihood ratio statistic. Moreover, standard errors obtained from the Hessian are biased. In this paper, the performances of different model selection methods for the trend vector model are studied in detail. We specifically focused on two aspects of model selection: variable selection and dimensionality determination. Based on the quasi-likelihood function, selection criteria analogous to the likelihood ratio statistics, AIC and BIC, were employed. Additionally, Wald and resampling statistics were included as variable selection criteria. A series of simulations were carried out to evaluate the relative performance of these criteria. The results suggest that model selection can be best performed using either the quasi likelihood ratio statistic or the quasi-BIC. A special study on dimensionality selection found that the quasi-AIC also performs well for cases with degrees of freedom greater than 8. Another important finding is that the sandwich estimator for standard errors used in Wald statistics does not perform well. Even for larger sample sizes, the bias-correction procedure for the sandwich estimator is needed to give satisfactory results.
机译:模型选择是数据分析的重要组成部分。这项研究的重点是趋势矢量模型的模型选择问题,该模型是用于分析纵向多项式结果的模型。趋势矢量模型是所谓的边际模型,主要关注人口随时间推移的平均演变。采用拟似然法获得参数估计值。理论上,这种优化功能会使基于似然的统计信息(如似然比统计信息)无效。而且,从黑森州获得的标准误差是有偏差的。在本文中,详细研究了趋势矢量模型的不同模型选择方法的性能。我们特别关注模型选择的两个方面:变量选择和维数确定。基于准似然函数,采用类似于似然比统计的选择标准AIC和BIC。此外,Wald和重采样统计信息也作为变量选择标准。进行了一系列模拟,以评估这些标准的相对性能。结果表明,使用准似然比统计量或准BIC可以最好地执行模型选择。一项关于维数选择的特殊研究发现,对于自由度大于8的情况,准AIC的性能也很好。另一个重要发现是,Wald统计中使用的标准误差的三明治估计器的性能不佳。即使对于较大的样本量,也需要三明治估计器的偏差校正过程才能获得令人满意的结果。

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