Simultaneous variable selection and estimation in semiparametric regression of mixed panel count data

Author:

Ge Lei12,Hu Tao3ORCID,Li Yang1ORCID

Affiliation:

1. Department of Biostatistics and Health Data Science, Indiana University School of Medicine , Indianapolis, Indiana , 46202, United States

2. School of Mathematics & Statistics and KLAS, Northeast Normal University , Changchun, China, 130021 , China

3. School of Mathematical Sciences, Capital Normal University , Beijing, 100048 , China

Abstract

Abstract Mixed panel count data represent a common complex data structure in longitudinal survey studies. A major challenge in analyzing such data is variable selection and estimation while efficiently incorporating both the panel count and panel binary data components. Analyses in the medical literature have often ignored the panel binary component and treated it as missing with the unknown panel counts, while obviously such a simplification does not effectively utilize the original data information. In this research, we put forward a penalized likelihood variable selection and estimation procedure under the proportional mean model. A computationally efficient EM algorithm is developed that ensures sparse estimation for variable selection, and the resulting estimator is shown to have the desirable oracle property. Simulation studies assessed and confirmed the good finite-sample properties of the proposed method, and the method is applied to analyze a motivating dataset from the Health and Retirement Study.

Funder

National Natural Science Foundation of China

Beijing Municipal Natural Science Foundation

Publisher

Oxford University Press (OUP)

Reference33 articles.

1. Emergency department utilization, hospital admissions, and physician visits among elderly African American persons;Bazargan;The Gerontologist,1998

2. Utilization of mental health care services among older adults with depression;Crabb;Journal of Clinical Psychology,2006

3. Monotone spline-based least squares estimation for panel count data with informative observation times;Deng;Biometrical Journal,2015

4. Variable selection and estimation with the seamless-$L_0$ penalty;Dicker;Statistica Sinica,2013

5. Variable selection via nonconcave penalized likelihood and its oracle properties;Fan;Journal of the American Statistical Association,2001

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