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A User-Friendly Computational Framework for Robust Structured Regression with the L2_22​ Criterion

8 October 2020
Jocelyn T. Chi
Eric C. Chi
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Abstract

We introduce a user-friendly computational framework for implementing robust versions of a wide variety of structured regression methods with the L2_{2}2​ criterion. In addition to introducing an algorithm for performing L2_{2}2​E regression, our framework enables robust regression with the L2_{2}2​ criterion for additional structural constraints, works without requiring complex tuning procedures on the precision parameter, can be used to identify heterogeneous subpopulations, and can incorporate readily available non-robust structured regression solvers. We provide convergence guarantees for the framework and demonstrate its flexibility with some examples. Supplementary materials for this article are available online.

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