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Bayesian estimation of unrestricted and order-restricted association models for a two-way contingency table

机译:双向列联表的无限制和有顺序限制的关联模型的贝叶斯估计

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In two-way contingency tables analysis, a popular class of models for describing the structure of the association between the two categorical variables are the so-called “association” models. Such models assign scores to the classification variables which can be either fixed and prespecified or unknown parameters to be estimated. Under the row–column (RC) association model, both row and column scores are unknown parameters without any restriction concerning their ordinality. It is natural to impose order restrictions on the scores when the classification variables are ordinal. The Bayesian approach for the RC (unrestricted and restricted) model is adopted. MCMC methods are facilitated in order the parameters to be estimated. Furthermore, an alternative parametrization of the association models is proposed. This new parametrization simplifies computation in the MCMC procedure and leads to a natural parameter space for the order constrained model. The proposed methodology is illustrated via a popular dataset.
机译:在双向列联表分析中,用于描述两个类别变量之间的关联结构的流行模型是所谓的“关联”模型。这样的模型将分数分配给分类变量,该分类变量可以是固定的和预定的或待估计的未知参数。在行-列(RC)关联模型下,行和列分数都是未知参数,对其序数没有任何限制。当分类变量为序数时,对分数施加顺序限制是很自然的。对于RC(无限制和受限)模型,采用了贝叶斯方法。方便使用MCMC方法以估计参数。此外,提出了关联模型的替代参数化。这种新的参数化简化了MCMC过程中的计算,并为阶数受限模型提供了自然的参数空间。通过流行的数据集说明了所提出的方法。

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