Robust covariance estimation under L4-L2 norm equivalence
Abstract
Let X be a centered random vector taking values in Rd and let = E(X X) be its covariance matrix. We show that if X satisfies an L4-L2 norm equivalence, there is a covariance estimator that exhibits the optimal performance one would expect had X been a gaussian vector. The procedure also improves the current state-of-the-art regarding high probability bounds in the subgaussian case (sharp results were only known in expectation or with constant probability). In both scenarios the new bound does not depend explicitly on the dimension d, but rather on the effective rank of the covariance matrix .
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