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Statistica Sinica 33 (2023), 633-662

PENALIZED REGRESSION FOR MULTIPLE TYPES OF
MANY FEATURES WITH MISSING DATA

Kin Yau Wong1 , Donglin Zeng2 and D. Y. Lin2

1The Hong Kong Polytechnic University
and 2The University of North Carolina at Chapel Hill

Abstract: Recent technological advances have made it possible to measure multiple types of many features in biomedical studies. However, some data types or features may not be measured for all study subjects because of cost or other constraints. We use a latent variable model to characterize the relationships across and within data types and to infer missing values from observed data. We develop a penalized-likelihood approach for variable selection and parameter estimation and devise an efficient expectation-maximization algorithm to implement our approach. We establish the asymptotic properties of the proposed estimators when the number of features increases at a polynomial rate of the sample size. Finally, we demonstrate the usefulness of the proposed methods using extensive simulation studies and provide an application to a motivating multi-platform genomics study.

Key words and phrases: Adaptive lasso, factor models, integrative analysis, multimodality data, multi-platform genomics studies, penalized regression.

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