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Log-linear modeling using conditional log-linear structures

机译:使用条件对数线性结构的对数线性建模

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Analysis of large dimensional contingency tables is rather difficult. Fienberg and Kim (1999, Journal of American Statistical Association, 94, 229–239) studied the problem of combining conditional (on single variable) log-linear structures for graphical models to obtain partial information about the full graphical log-linear model. In this paper, we consider the general log-linear models and obtain explicit representation for the log-linear parameters of the full model based on that of conditional structures. As a consequence, we give conditions under which a particular log-linear parameter is present or not in the full model. Some of the main results of Fienberg and Kim follow from our results. The explicit relationships between full model and the conditional structures are also presented. The connections between conditional structures and the layer structures are pointed out. We investigate also the hierarchical nature of the full model, based on conditional structures. Kim (2006, Computational Statistics and Data Analysis, 50, 2044–2064) analyzed graphical log-linear models based on conditional log-linear structures, when a set of variables is conditioned. For this case, we employ the Möbius inversion technique to obtain the interaction parameters of the full log-linear model, and discuss their properties. The hierarchical nature of the full model is also studied based on conditional structures. This result could be effectively used for the model selection also. As applications of our results, we have discussed several typical examples, including a real-life example. Keywords Categorical data - Conditional log-linear model - Graphical model - Hierarchical model - Interaction factor - Log-linear model - Möbius inversion - Model combining
机译:大型列联表的分析相当困难。 Fienberg和Kim(1999,《美国统计协会杂志》,94,229–239)研究了将条件(单变量)对数线性结构组合到图形模型中以获得有关完整图形对数线性模型的部分信息的问题。在本文中,我们考虑了一般的对数线性模型,并在条件结构的基础上获得了完整模型的对数线性参数的显式表示。结果,我们给出了在整个模型中是否存在特定对数线性参数的条件。 Fienberg和Kim的一些主要结果来自我们的结果。还介绍了完整模型与条件结构之间的显式关系。指出了条件结构和层结构之间的联系。我们还将基于条件结构研究完整模型的层次性质。 Kim(2006,计算统计和数据分析,50,2044-2064)在对一组变量进行条件化时,基于条件对数线性结构分析了图形对数线性模型。对于这种情况,我们采用莫比乌斯反演技术来获得完整对数线性模型的相互作用参数,并讨论它们的性质。还基于条件结构研究了完整模型的分层性质。该结果也可以有效地用于模型选择。作为我们结果的应用,我们讨论了几个典型示例,包括一个实际示例。分类数据-条件对数线性模型-图形模型-层次模型-相互作用因子-对数线性模型-莫比乌斯反演-模型组合

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