English

High-dimensional classification by sparse logistic regression

Statistics Theory 2018-11-20 v3 Machine Learning Statistics Theory

Abstract

We consider high-dimensional binary classification by sparse logistic regression. We propose a model/feature selection procedure based on penalized maximum likelihood with a complexity penalty on the model size and derive the non-asymptotic bounds for the resulting misclassification excess risk. The bounds can be reduced under the additional low-noise condition. The proposed complexity penalty is remarkably related to the VC-dimension of a set of sparse linear classifiers. Implementation of any complexity penalty-based criterion, however, requires a combinatorial search over all possible models. To find a model selection procedure computationally feasible for high-dimensional data, we extend the Slope estimator for logistic regression and show that under an additional weighted restricted eigenvalue condition it is rate-optimal in the minimax sense.

Keywords

Cite

@article{arxiv.1706.08344,
  title  = {High-dimensional classification by sparse logistic regression},
  author = {Felix Abramovich and Vadim Grinshtein},
  journal= {arXiv preprint arXiv:1706.08344},
  year   = {2018}
}