Robust Regression and Lasso
Xu, Huan, Caramanis, Constantine, Mannor, Shie
–Neural Information Processing Systems
We consider robust least-squares regression with feature-wise disturbance. We show that this formulation leads to tractable convex optimization problems, and we exhibit a particular uncertainty set for which the robust problem is equivalent to $\ell_1$ regularized regression (Lasso). This provides an interpretation of Lasso from a robust optimization perspective. We generalize this robust formulation to consider more general uncertainty sets, which all lead to tractable convex optimization problems. Therefore, we provide a new methodology for designing regression algorithms, which generalize known formulations.
Neural Information Processing Systems
Feb-15-2020, 03:57:41 GMT
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