English

Robust sketching for multiple square-root LASSO problems

Optimization and Control 2014-11-04 v1 Machine Learning Systems and Control Machine Learning

Abstract

Many learning tasks, such as cross-validation, parameter search, or leave-one-out analysis, involve multiple instances of similar problems, each instance sharing a large part of learning data with the others. We introduce a robust framework for solving multiple square-root LASSO problems, based on a sketch of the learning data that uses low-rank approximations. Our approach allows a dramatic reduction in computational effort, in effect reducing the number of observations from mm (the number of observations to start with) to kk (the number of singular values retained in the low-rank model), while not sacrificing---sometimes even improving---the statistical performance. Theoretical analysis, as well as numerical experiments on both synthetic and real data, illustrate the efficiency of the method in large scale applications.

Keywords

Cite

@article{arxiv.1411.0024,
  title  = {Robust sketching for multiple square-root LASSO problems},
  author = {Vu Pham and Laurent El Ghaoui and Arturo Fernandez},
  journal= {arXiv preprint arXiv:1411.0024},
  year   = {2014}
}
R2 v1 2026-06-22T06:44:01.165Z