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多离散结果的潜变量回归

Latent Variable Regression for Multiple Discrete Outcomes

Journal of the American Statistical Association · 1997
被引 72
ABS 4

中文导读

研究了伴随潜类模型,用于分析多个分类结果与协变量的关系,提出了模型简化和识别理论,并用老年学数据展示了方法。

Abstract

Abstract Quantifying human health and functioning poses significant challenges in many research areas. Commonly in the social and behavioral sciences and increasingly in epidemiologic research, multiple indicators are utilized as responses in lieu of an obvious single measure for an outcome of interest. In this article we study the concomitant latent class model for analyzing such multivariate categorical outcome data. We develop practical theory for reducing and identifying such models. We detail parameter and standard error fitting that parallels standard latent class methodology, thus supplementing the approach proposed by Dayton and Macready. We propose and study diagnostic strategies, exemplifying our methods using physical disability data from an ongoing gerontologic study. Throughout, the focus of our work is on applications for which a primary goal is to study the association between health or functioning and covariates. Key Words: Categorical dataDiagnosisIdentifiabilityLatent classLink functionMixture model.

潜变量模型分类数据健康测量计量经济学