LGSTMLMay 29, 2018

High Dimensional Robust Sparse Regression

arXiv:1805.11643v376 citations
Originality Highly original
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This addresses robust regression for high-dimensional data with corruptions, offering a novel algorithm with improved efficiency and error bounds.

The paper tackles high-dimensional sparse regression with a constant fraction of corruptions in variables, proposing an algorithm that recovers true sparse parameters with sub-linear sample complexity and achieves near-optimal error guarantees under identity covariance.

We provide a novel -- and to the best of our knowledge, the first -- algorithm for high dimensional sparse regression with constant fraction of corruptions in explanatory and/or response variables. Our algorithm recovers the true sparse parameters with sub-linear sample complexity, in the presence of a constant fraction of arbitrary corruptions. Our main contribution is a robust variant of Iterative Hard Thresholding. Using this, we provide accurate estimators: when the covariance matrix in sparse regression is identity, our error guarantee is near information-theoretically optimal. We then deal with robust sparse regression with unknown structured covariance matrix. We propose a filtering algorithm which consists of a novel randomized outlier removal technique for robust sparse mean estimation that may be of interest in its own right: the filtering algorithm is flexible enough to deal with unknown covariance. Also, it is orderwise more efficient computationally than the ellipsoid algorithm. Using sub-linear sample complexity, our algorithm achieves the best known (and first) error guarantee. We demonstrate the effectiveness on large-scale sparse regression problems with arbitrary corruptions.

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