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Activity Number: 218 - Novel Methodology Development in High-Dimensional Longitudinal Data Analysis
Type: Invited
Date/Time: Tuesday, August 9, 2022 : 8:30 AM to 10:20 AM
Sponsor: ENAR
Abstract #320317
Title: Regression Analysis of Correlations for Correlated Data
Author(s): Jie Hu and Yu Chen and Chenlei Leng and Cheng Yong Tang*
Companies: University of Science and Technology of China and University of Science and Technology of China and University of Warwick and Temple University
Keywords: Correlogram; Correlated data analysis; Generalized z-transformation; Regression modeling; Testing random effects
Abstract:

Correlated data are ubiquitous in today's data-driven society. A fundamental task in analyzing these data is to understand, characterize and utilize the correlations in them in order to conduct valid inference. Yet explicit regression analysis of correlations has been so far limited to longitudinal data, a special form of correlated data, while implicit analysis via mixed-effects models lacks generality as a full inferential tool. This paper proposes a novel regression approach for modelling the correlation structure, leveraging a new generalized z-transformation. This transformation maps correlation matrices that are constrained to be positive definite to vectors with unrestricted support and is order-invariant. Building on these two properties, we develop a regression model to relate the transformed parameters to any covariates. We show that coupled with a mean and a variance regression model, the use of maximum likelihood leads to asymptotically normal parameter estimates, and crucially enables statistical inference for all the parameters. The performance of our framework is demonstrated in extensive simulation.


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