Inference for Ordinal Log-Linear Models Based on Algebraic Statistics

T. M. Pham, M. Kateri
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引用次数: 0

Abstract

Tools of algebraic statistics combined with MCMC algorithms have been used in contingency table analysis for model selection and model fit testing of log-linear models. However, this approach has not been considered so far for association models, which are special log-linear models for tables with ordinal classification variables. The simplest association model for two-way tables, the uniform (U) association model, has just one parameter more than the independence model and is applicable when both classification variables are ordinal. Less parsimonious are the row (R) and column (C) effect association models, appropriate when at least one of the classification variables is ordinal. Association models have been extended for multidimensional contingency tables as well. Here, we adjust algebraic methods for association models analysis and investigate their eligibility, focusing mainly on two-way tables. They are implemented in the statistical software R and illustrated on real data tables. Finally the algebraic model fit and selection procedure is assessed and compared to the asymptotic approach in terms of a simulation study.
基于代数统计的有序对数线性模型的推理
将代数统计工具与MCMC算法相结合,应用于对数线性模型的列联表分析中进行模型选择和模型拟合检验。然而,到目前为止,这种方法还没有被考虑用于关联模型,关联模型是具有有序分类变量的表的特殊对数线性模型。最简单的双向表关联模型是统一(U)关联模型,它只比独立模型多一个参数,适用于两个分类变量都是有序的情况。行(R)和列(C)效应关联模型不那么简洁,适用于至少有一个分类变量是有序的情况。关联模型也针对多维列联表进行了扩展。在这里,我们调整了关联模型分析的代数方法,并调查了它们的资格,主要关注于双向表。它们在统计软件R中实现,并在实际数据表中进行说明。最后,对代数模型的拟合和选择过程进行了评估,并与渐近方法进行了仿真研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Algebraic Statistics
Journal of Algebraic Statistics STATISTICS & PROBABILITY-
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