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A Latent Variable Regression Model for Asymmetric Bivariate Ordered Categorical Data

机译:非对称双变量有序分类数据的潜在变量回归模型

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摘要

In many areas of medical research, especially in studies that involve paired organs, a bivariate ordered categorical response should be analyzed. Using a bivariate continuous distribution as the latent variable is an interesting strategy for analyzing these data sets. In this context, the bivariate standard normal distribution, which leads to the bivariate cumulative probit regression model, is the most common choice. In this paper, we introduce another latent variable regression model for modeling bivariate ordered categorical responses. This model may be an appropriate alternative for the bivariate cumulative probit regression model, when postulating a symmetric form for marginal or joint distribution of response data does not appear to be a valid assumption. We also develop the necessary numerical procedure to obtain the maximum likelihood estimates of the model parameters. To illustrate the proposed model, we analyze data from an epidemiologic study to identify some of the most important risk indicators of periodontal disease among students 15-19 years in Tehran, Iran.
机译:在医学研究的许多领域,尤其是在涉及配对器官的研究中,应分析双变量有序分类反应。使用双变量连续分布作为潜在变量是分析这些数据集的有趣策略。在这种情况下,导致二元累积概率回归模型的二元标准正态分布是最常见的选择。在本文中,我们介绍了另一个用于建模双变量有序分类响应的潜在变量回归模型。当为响应数据的边际或联合分布假设对称形式似乎不是有效假设时,该模型可能是双变量累积概率回归模型的合适替代方法。我们还开发了必要的数值程序来获得模型参数的最大似然估计。为了说明所提出的模型,我们分析了一项流行病学研究的数据,以确定伊朗德黑兰15-19岁学生中牙周疾病的一些最重要的风险指标。

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