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首页> 外文期刊>The British journal of mathematical and statistical psychology >A latent class distance association model for cross-classified data with a categorical response variable
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A latent class distance association model for cross-classified data with a categorical response variable

机译:具有分类响应变量的交叉分类数据的潜在类距离关联模型

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In this paper we propose a latent class distance association model for clustering in the predictor space of large contingency tables with a categorical response variable. The rows of such a table are characterized as profiles of a set of explanatory variables, while the columns represent a single outcome variable. In many cases such tables are sparse, with many zero entries, which makes traditional models problematic. By clustering the row profiles into a few specific classes and representing these together with the categories of the response variable in a low-dimensional Euclidean space using a distance association model, a parsimonious prediction model can be obtained. A generalized EM algorithm is proposed to estimate the model parameters and the adjusted Bayesian information criterion statistic is employed to test the number of mixture components and the dimensionality of the representation. An empirical example highlighting the advantages of the new approach and comparing it with traditional approaches is presented.
机译:在本文中,我们提出了一个潜在类距离关联模型,用于在具有分类响应变量的大型列联表的预测变量空间中进行聚类。该表的行被表征为一组解释变量的简档,而列则代表单个结果变量。在许多情况下,这样的表稀疏,有很多零条目,这使传统模型有问题。通过将行轮廓聚类为几个特定的​​类别,并使用距离关联模型在低维欧几里得空间中将这些类别与响应变量的类别一起表示,可以得到简约的预测模型。提出了一种通用的EM算法来估计模型参数,并使用调整后的贝叶斯信息准则统计量来测试混合成分的数量和表示的维数。给出了一个经验示例,突出了该新方法的优势并将其与传统方法进行了比较。

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