降秩向量广义线性模型

T. Yee, T. Hastie
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引用次数: 67

摘要

降秩回归是一种极具降维潜力的方法,但在应用统计学中应用较少。为了解决这个问题,提出了对向量广义线性模型(VGLMs)的降秩回归,这类模型非常大。得到的类,我们称之为降阶vglm (rr - vglm),它可以将降阶回归的好处传递给广泛的数据类型,包括分类数据。rr - vglm通过关注分类数据的模型,特别是多项逻辑模型来说明。提供了一般算法细节,并描述了第一作者编写的软件。在劳动力数据的回归分析和分类问题两种情况下,用实际数据说明了降阶多项式逻辑模型。
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Reduced-rank vector generalized linear models
Reduced-rank regression is a method with great potential for dimension reduction but has found few applications in applied statistics. To address this, reduced-rank regression is proposed for the class of vector generalized linear models (VGLMs), which is very large. The resulting class, which we call reduced-rank VGLMs (RR-VGLMs), enables the benefits of reduced-rank regression to be conveyed to a wide range of data types, including categorical data. RR-VGLMs are illustrated by focussing on models for categorical data, and especially the multinomial logit model. General algorithmic details are provided and software written by the first author is described. The reduced-rank multinomial logit model is illustrated with real data in two contexts: a regression analysis of workforce data and a classification problem.
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