Simultaneous structure estimation and variable selection in partial linear varying coefficient models for longitudinal data |
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Authors: | Kangning Wang |
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Affiliation: | 1. Shandong University Qilu Securities Institute for Financial Studies and School of Mathematics, Shandong University, Jinan, People's Republic of China;2. Department of Mathematics &3. KLDAIP, Chongqing University of Arts and Sciences, Chongqing, People's Republic of China |
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Abstract: | Partial linear varying coefficient models (PLVCM) are often considered for analysing longitudinal data for a good balance between flexibility and parsimony. The existing estimation and variable selection methods for this model are mainly built upon which subset of variables have linear or varying effect on the response is known in advance, or say, model structure is determined. However, in application, this is unreasonable. In this work, we propose a simultaneous structure estimation and variable selection method, which can do simultaneous coefficient estimation and three types of selections: varying and constant effects selection, relevant variable selection. It can be easily implemented in one step by employing a penalized M-type regression, which uses a general loss function to treat mean, median, quantile and robust mean regressions in a unified framework. Consistency in the three types of selections and oracle property in estimation are established as well. Simulation studies and real data analysis also confirm our method. |
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Keywords: | longitudinal data partial linear varying coefficient models three types of selections selection consistency oracle property |
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