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arxiv 1609.07195 v3 pith:T7KSW5L5 submitted 2016-09-23 stat.ME stat.COstat.ML

Balancing Statistical and Computational Precision: A General Theory and Applications to Sparse Regression

classification stat.ME stat.COstat.ML
keywords approachaspectscomputationalcomputationallydataregressionsparsestatistical
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Modern technologies are generating ever-increasing amounts of data. Making use of these data requires methods that are both statistically sound and computationally efficient. Typically, the statistical and computational aspects are treated separately. In this paper, we propose an approach to entangle these two aspects in the context of regularized estimation. Applying our approach to sparse and group-sparse regression, we show that it can improve on standard pipelines both statistically and computationally.

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