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RSVP-graphs: Fast High-dimensional Covariance Matrix Estimation under Latent Confounding

2 November 2018
Rajen Dinesh Shah
Benjamin Frot
Gian-Andrea Thanei
N. Meinshausen
ArXiv (abs)PDFHTML
Abstract

In this work we consider the problem of estimating a high-dimensional p×pp \times pp×p covariance matrix Σ\SigmaΣ, given nnn observations of confounded data with covariance Σ+ΓΓT\Sigma + \Gamma \Gamma^TΣ+ΓΓT, where Γ\GammaΓ is an unknown p×qp \times qp×q matrix of latent factor loadings. We propose a simple and scalable estimator based on the projection on to the right singular vectors of the observed data matrix, which we call RSVP. Our theoretical analysis of this method reveals that in contrast to PCA-based approaches, RSVP is able to cope well with settings where the smallest eigenvalue of ΓTΓ\Gamma^T \GammaΓTΓ is close to the largest eigenvalue of Σ\SigmaΣ, as well as settings where the eigenvalues of ΓTΓ\Gamma^T \GammaΓTΓ are diverging fast. It is also able to handle data that may have heavy tails and only requires that the data has an elliptical distribution. RSVP does not require knowledge or estimation of the number of latent factors qqq, but only recovers Σ\SigmaΣ up to an unknown positive scale factor. We argue this suffices in many applications, for example if an estimate of the correlation matrix is desired. We also show that by using subsampling, we can further improve the performance of the method. We demonstrate the favourable performance of RSVP through simulation experiments and an analysis of gene expression datasets collated by the GTEX consortium.

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