Asymmetry models based on ordered score and separations of symmetry model for square contingency tables

S. Ando
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引用次数: 2

Abstract

Summary This study proposes two original asymmetry models based on ordered scores for square contingency tables with the same row and column ordinal classifications. The proposed models can be applied to cases in which the scores of all categories are known or unknown. In the proposed models, the log odds for an observation falling in the (i, j)th cell instead of the (j, i)th cell are inversely proportional to the difference of the ordered scores corresponding to categories i and j. The asymmetry parameter of the proposed model can be useful for inferring whether the row variable is stochastically greater than the column variable or vice versa. The proposed models constantly hold when the symmetry model holds, but the converse is not necessarily true. This study also examines what is necessary for a model, in addition to the proposed models, to satisfy the symmetry model, and gives separations of the symmetry model using the proposed and marginal mean equality models. We apply real data to show the utility of the proposed models. The proposed models provide a better fit than that of the existing models.
基于有序分值的非对称模型和方形列联表对称模型的分离
本文提出了两种基于有序分数的方形列联表非对称模型。所提出的模型可以应用于所有类别的分数已知或未知的情况。在所提出的模型中,观测值落在第(i, j)个单元格而不是第(j, i)个单元格中的对数赔率与类别i和j对应的有序分数的差成反比。所提出模型的不对称参数可用于推断行变量是否随机大于列变量,反之亦然。当对称模型成立时,所提出的模型总是成立的,但反过来不一定成立。本研究还考察了除了所提出的模型之外,模型满足对称性模型所必需的条件,并使用所提出的模型和边际平均等式模型给出了对称模型的分离。我们用实际数据证明了所提出模型的有效性。所提出的模型比现有模型具有更好的拟合性。
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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