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Penalized Sparse Covariance Regression with High Dimensional Covariates

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posted on 2024-10-15, 13:00 authored by Yuan Gao, Zhiyuan Zhang, Zhanrui Cai, Xuening Zhu, Tao Zou, Hansheng Wang

Covariance regression offers an effective way to model the large covariance matrix with the auxiliary similarity matrices. In this work, we propose a sparse covariance regression (SCR) approach to handle the potentially high-dimensional predictors (i.e., similarity matrices). Specifically, we use the penalization method to identify the informative predictors and estimate their associated coefficients simultaneously. We first investigate the Lasso estimator and subsequently consider the folded concave penalized estimation methods (e.g., SCAD and MCP). However, the theoretical analysis of the existing penalization methods is primarily based on iid data, which is not directly applicable to our scenario. To address this difficulty, we establish the non-asymptotic error bounds by exploiting the spectral properties of the covariance matrix and similarity matrices. Then, we derive the estimation error bound for the Lasso estimator and establish the desirable oracle property of the folded concave penalized estimator. Extensive simulation studies are conducted to corroborate our theoretical results. We also illustrate the usefulness of the proposed method by applying it to a Chinese stock market dataset.

Funding

Yuan Gao’s research is supported by the Postdoctoral Fellowship Program of CPSF (GZC20230111) and the National Natural Science Foundation of China (No. 72471254). Xuening Zhu’s research is supported by the National Natural Science Foundation of China (nos. 72222009, 71991472, 12331009), Shanghai International Science and Technology Partnership Project (No. 21230780200), Shanghai B&R Joint Laboratory Project (No. 22230750300), MOE Laboratory for National Development and Intelligent Governance, Fudan University, IRDR ICoE on Risk Interconnectivity and Governance on Weather/Climate Extremes Impact and Public Health, Fudan University. Tao Zou’s research is supported by the ANU College of Business and Economics Early Career Researcher Grant, and the RSFAS Cross Disciplinary Grant. Hansheng Wang’s research is partially supported by the National Natural Science Foundation of China (No. 12271012).

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