Tackling Combinatorial Distribution Shift: A Matrix Completion Perspective
Max Simchowitz, Abhishek Gupta, Kaiqing Zhang

TL;DR
This paper addresses the challenge of generalizing under combinatorial distribution shift by developing new algorithms and theoretical guarantees for bilinear extrapolation, extending matrix completion techniques to more realistic high-dimensional data scenarios.
Contribution
It introduces a novel approach for bilinear combinatorial extrapolation under spectral decay, with new algorithms, generalization guarantees, and a perturbation bound for SVD approximations.
Findings
Developed algorithms for bilinear extrapolation with spectral decay
Provided generalization guarantees for high-dimensional data
Proposed a new perturbation bound for SVD based on spectral gap
Abstract
Obtaining rigorous statistical guarantees for generalization under distribution shift remains an open and active research area. We study a setting we call combinatorial distribution shift, where (a) under the test- and training-distributions, the labels are determined by pairs of features , (b) the training distribution has coverage of certain marginal distributions over and separately, but (c) the test distribution involves examples from a product distribution over that is {not} covered by the training distribution. Focusing on the special case where the labels are given by bilinear embeddings into a Hilbert space : , we aim to extrapolate to a test distribution domain that is covered in training, i.e., achieving bilinear combinatorial extrapolation. Our setting generalizes a…
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Taxonomy
TopicsBlind Source Separation Techniques · Random Matrices and Applications · Sparse and Compressive Sensing Techniques
