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Minimax Lower Bounds for Linear Independence Testing

23 January 2016
Aaditya Ramdas
David Isenberg
Aarti Singh
Larry A. Wasserman
ArXiv (abs)PDFHTML
Abstract

Linear independence testing is a fundamental information-theoretic and statistical problem that can be posed as follows: given nnn points {(Xi,Yi)}i=1n\{(X_i,Y_i)\}^n_{i=1}{(Xi​,Yi​)}i=1n​ from a p+qp+qp+q dimensional multivariate distribution where Xi∈RpX_i \in \mathbb{R}^pXi​∈Rp and Yi∈RqY_i \in\mathbb{R}^qYi​∈Rq, determine whether aTXa^T XaTX and bTYb^T YbTY are uncorrelated for every a∈Rp,b∈Rqa \in \mathbb{R}^p, b\in \mathbb{R}^qa∈Rp,b∈Rq or not. We give minimax lower bound for this problem (when p+q,n→∞p+q,n \to \inftyp+q,n→∞, (p+q)/n≤κ<∞(p+q)/n \leq \kappa < \infty(p+q)/n≤κ<∞, without sparsity assumptions). In summary, our results imply that nnn must be at least as large as pq/∥ΣXY∥F2\sqrt {pq}/\|\Sigma_{XY}\|_F^2pq​/∥ΣXY​∥F2​ for any procedure (test) to have non-trivial power, where ΣXY\Sigma_{XY}ΣXY​ is the cross-covariance matrix of X,YX,YX,Y. We also provide some evidence that the lower bound is tight, by connections to two-sample testing and regression in specific settings.

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