Covariance Matrix Estimation for High-Dimensional Interval-Valued Data with Positive Definiteness
/ Authors
Wangxuan Institute of Computer Technology, P. University, Wangxuan Institute of Computer Technology, China, Wenhao Cui School of Economics, Management, B. University, Beijing, Rui Zhang Center for Applied Statistics, School of Statistics
and 16 more authors
Renmin University of China, Bingyi Jing Department of Statistics, Data Science, Southern University of Science, Technology, Shenzhen, School of Artificial Intelligence, The Chinese University of Hong Kong, Yang Liu School of Public Affairs, University of Electronic Science, T. China, Hefei, Yijie Peng PKU-Wuhan Institute for Artificial Intelligence, X. Laboratory, Changsha, Guanghua School of Management
/ Abstract
In the realm of high-dimensional data analysis, the estimation of covariance matrices is a fundamental task, and this holds true for interval-valued data as well. However, there is no unified definition for the covariance matrix of interval-valued data, let alone established estimation methods in high-dimensional settings. This paper presents a novel approach to estimating covariance matrices for high-dimensional interval-valued data while ensuring positive definiteness. We begin by assuming that the upper and lower bounds of interval-valued variables share the same dependency structure. Based on this assumption, we extend the classical soft-thresholding covariance matrix estimator to the interval-valued scenario, referred to as the Interval-valued Soft-Thresholding (IST) estimator. Subsequently, to ensure the positive definiteness of the estimator, we impose a positive definiteness constraint on the IST estimator. We derive an alternating direction method to solve the proposed problem and establish its convergence. Under some very mild conditions, we develop a non-asymptotic statistical theory for the proposed estimator. Simulation studies and applications to high-frequency financial data from the CSI 300 Index demonstrated the effectiveness of the proposed estimator.