1. Modeling Group , Sentrana Inc. , Washington , DC , USA liuxia.wang@sentrana.com;3. Biostatistics Department , K&4. L Consulting Services Inc. , Fort Washington , Pennsylvania , USA
Abstract:
A crucial issue for principal components analysis (PCA) is to determine the number of principal components to capture the variability of usually high-dimensional data. In this article the dimension detection for PCA is formulated as a variable selection problem for regressions. The adaptive LASSO is used for the variable selection in this application. Simulations demonstrate that this approach is more accurate than existing methods in some cases and competitive in some others. The performance of this model is also illustrated using a real example.