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Covariate Assisted Principal Regression for Covariance Matrix Outcomes

Yi Zhao, Bingkai Wang, Stewart H. Mostofsky, Brian S. Caffo, Xi Luo
doi: https://doi.org/10.1101/425033
Yi Zhao
1Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health
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Bingkai Wang
2Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health
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Stewart H. Mostofsky
3Center for Neurodevelopmental and Imaging Research (CNIR), at Kennedy Krieger Institute, Johns Hopkins University School of Medicine
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Brian S. Caffo
4Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health
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Xi Luo
5Department of Biostatistics, School of Public Health, Brown University
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Abstract

Modeling variances in data has been an important topic in many fields, including in financial and neuroimaging analysis. We consider the problem of regressing covariance matrices on a vector covariates, collected from each observational unit. The main aim is to uncover the variation in the covariance matrices across units that are explained by the covariates. This paper introduces Covariate Assisted Principal (CAP) regression, an optimization-based method for identifying the components predicted by (generalized) linear models of the covariates. We develop computationally efficient algorithms to jointly search the projection directions and regression coefficients, and we establish the asymptotic properties. Using extensive simulation studies, our method shows higher accuracy and robustness in coefficient estimation than competing methods. Applied to a resting-state functional magnetic resonance imaging study, our approach identifies the human brain network changes associated with age and sex.

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Posted September 23, 2018.
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Covariate Assisted Principal Regression for Covariance Matrix Outcomes
Yi Zhao, Bingkai Wang, Stewart H. Mostofsky, Brian S. Caffo, Xi Luo
bioRxiv 425033; doi: https://doi.org/10.1101/425033
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Covariate Assisted Principal Regression for Covariance Matrix Outcomes
Yi Zhao, Bingkai Wang, Stewart H. Mostofsky, Brian S. Caffo, Xi Luo
bioRxiv 425033; doi: https://doi.org/10.1101/425033

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