Learning a Single Neuron Robustly to Distributional Shifts and Adversarial Label Noise
Shuyao Li, Sushrut Karmalkar, Ilias Diakonikolas, Jelena Diakonikolas

TL;DR
This paper introduces an efficient algorithm for learning a single neuron that is robust to distributional shifts and adversarial label noise, minimizing worst-case squared loss within a chi-squared divergence neighborhood.
Contribution
It presents a primal-dual algorithm that effectively handles nonconvex $L_2^2$ loss for robust single neuron learning under distributional shifts and label noise.
Findings
Algorithm achieves near-optimal risk bounds.
Dimension-independent constant C in risk bound.
Framework opens new directions for structured nonconvex optimization.
Abstract
We study the problem of learning a single neuron with respect to the -loss in the presence of adversarial distribution shifts, where the labels can be arbitrary, and the goal is to find a ``best-fit'' function. More precisely, given training samples from a reference distribution , the goal is to approximate the vector which minimizes the squared loss with respect to the worst-case distribution that is close in -divergence to . We design a computationally efficient algorithm that recovers a vector satisfying , where is a dimension-independent constant and is the witness attaining the min-max risk…
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Taxonomy
TopicsNeural Networks and Applications
