Article ID Journal Published Year Pages File Type
415187 Computational Statistics & Data Analysis 2009 10 Pages PDF
Abstract

There have been an increasing number of applications where the number of predictors is large, meanwhile data are repeatedly measured at a sequence of time points. In this article we investigate how dimension reduction method can be employed for analyzing such high-dimensional longitudinal data. Predictor dimension can be effectively reduced while full regression means information can be retained during dimension reduction. Simultaneous variable selection along with dimension reduction is studied, and graphical diagnosis and model fitting after dimension reduction are investigated. The method is flexible enough to encompass a variety of commonly used longitudinal models.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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