Greedy Variable Selection For High-Dimensional Cox Models
- 2020-07-01 (Wed.), 14:00 PM
- R6005, Research Center for Environmental Changes Building
- The reception will be held at 15:00 at the R6005, Research Center for Environmental Changes Building
- Dr. Chien-Tong Lin
- Institute of Statistics, National Tsing Hua University
Abstract
Model selection for sparse high-dimensional Cox models has broad applications to contemporary biostatistics, in particular, to extracting relevant biomarkers from high-dimensional survival data. In this talk, we propose using a greedy-type algorithm, Chebyshev Greedy Algorithm (CGA), to iteratively include covariates in the aforementioned models, and show that with probability tending to one, all relevant covariates can be included in a moderate number of iterations. We also devise a high-dimensional information criterion (HDIC) to remove the redundant covariates chosen by CGA, thereby leading to selection consistency. Finally, the proposed method is illustrated using simulated data and a Multiple myeloma (MM) dataset.