Poster
in
Workshop: Optimization for ML Workshop
A Second-Order Algorithm for Empirical Group Distributionally Robust Regression
Naren Manoj · Kumar Kshitij Patel
Abstract:
We present an algorithm for the empirical group distributionally robust (GDR) least squares problem. Given m groups, a parameter vector in Rd, and stacked design matrices and responses A and b, our algorithm obtains a (1+ε)-multiplicative optimal solution using ˜O(min(rank(A),m)1/3ε−2/3) linear system solves of matrices of the form A⊤BA for block-diagonal B. Our technical methods follow from a recent technique that relates the empirical GDR problem to a carefully chosen least squares problem and an application of ball-oracle acceleration. For moderate accuracy regimes, our algorithm improves over all known interior point methods and matches the state-of-the-art guarantees for the special case of ℓ∞ regression.
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