Linear independence testing is a fundamental information-theoretic and statistical problem that can be posed as follows: given points from a dimensional multivariate distribution where and , determine whether and are uncorrelated for every or not. We give minimax lower bound for this problem (when , , without sparsity assumptions). In summary, our results imply that must be at least as large as for any procedure (test) to have non-trivial power, where is the cross-covariance matrix of . 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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