List-Decodable Regression via Expander Sketching

Abstract

We introduce an expander-sketching framework for list-decodable linear regression that achieves sample complexity O((d+(1/δ))/α), list size O(1/α), and near input-sparsity running time O(nnz(X)+d3/α) under standard sub-Gaussian assumptions. Our method uses lossless expanders to synthesize lightly contaminated batches, enabling robust aggregation and a short spectral filtering stage that matches the best known efficient guarantees while avoiding SoS machinery and explicit batch structure.

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