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Extending dual multiple factor analysis to categorical tables

机译:将双重多因素分析扩展到分类表

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This paper describes a proposal for the extension of the dual multiple factor analysis (DMFA) method developed by Le and Pages [15] to the analysis of categorical tables in which the same set of variables is measured on different sets of individuals. The extension of DMFA is based on the transformation of categorical variables into properly weighted indicator variables, in a way analogous to that used in the multiple factor analysis of categorical variables. The DMFA of categorical variables enables visual comparison of the association structures between categories over the sample as a whole and in the various subsamples (sets of individuals). For each category, DMFA allows us to obtain its global (considering all the individuals) and partial (considering each set of individuals) coordinates in a factor space. This visual analysis allows us to compare the set of individuals to identify their similarities and differences. The suitability of the technique is illustrated through two applications: one using simulated data for two groups of individuals with very different association structures and the other using real data from a voting intention survey in which some respondents were interviewed by telephone and others face to face. The results indicate that the two data collection methods, while similar, are not entirely equivalent.
机译:本文描述了将Le和Pages [15]开发的双多因素分析(DMFA)方法扩展到分类表分析的建议,在分类表中,对不同的个体集测量相同的变量集。 DMFA的扩展基于将分类变量转换为适当加权的指标变量的方式,类似于在分类变量的多因素分析中使用的方法。类别变量的DMFA可以直观地比较整个样本以及各个子样本(个人集合)中类别之间的关联结构。对于每个类别,DMFA允许我们在因子空间中获取其全局(考虑所有个体)和部分(考虑每个个体集合)坐标。这种视觉分析使我们可以比较一组个人,以识别他们的异同。该技术的适用性通过两个应用程序进行了说明:一种使用模拟数据用于两组具有非常不同的关联结构的个人,另一种使用来自投票意向调查的真实数据,其中一些受访者通过电话进行了访谈,而另一些则面对面。结果表明,这两种数据收集方法虽然相似,但并不完全等效。

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