Inference on covariance operators via concentration inequalities: K-sample tests, classification, and clustering via rademacher complexities

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Abstract

We propose a novel approach to the analysis of covariance operators making use of concentration inequalities. First, non-asymptotic confidence sets are constructed for such operators. Then, subsequent applications including a k sample test for equality of covariance, a functional data classifier, and an expectation-maximization style clustering algorithm are derived and tested on both simulated and phoneme data.

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Kashlak, A. B., Aston, J. A. D., & Nickl, R. (2019). Inference on covariance operators via concentration inequalities: K-sample tests, classification, and clustering via rademacher complexities. Sankhya: The Indian Journal of Statistics, 81A, 214–243. https://doi.org/10.1007/s13171-018-0143-9

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