English

Maximin Optimization for Binary Regression

Machine Learning 2020-12-01 v3 Optimization and Control Machine Learning

Abstract

We consider regression problems with binary weights. Such optimization problems are ubiquitous in quantized learning models and digital communication systems. A natural approach is to optimize the corresponding Lagrangian using variants of the gradient ascent-descent method. Such maximin techniques are still poorly understood even in the concave-convex case. The non-convex binary constraints may lead to spurious local minima. Interestingly, we prove that this approach is optimal in linear regression with low noise conditions as well as robust regression with a small number of outliers. Practically, the method also performs well in regression with cross entropy loss, as well as non-convex multi-layer neural networks. Taken together our approach highlights the potential of saddle-point optimization for learning constrained models.

Keywords

Cite

@article{arxiv.2010.05077,
  title  = {Maximin Optimization for Binary Regression},
  author = {Nisan Chiprut and Amir Globerson and Ami Wiesel},
  journal= {arXiv preprint arXiv:2010.05077},
  year   = {2020}
}