Trust Region Newton Method for Logistic Regression 论文

2008Journal of Machine Learning Research引用 289
Face and Expression RecognitionNeural Networks and ApplicationsMachine Learning and Data Classification

摘要

Large-scale logistic regression arises in many applications such as document classification and natural language processing. In this paper, we apply a trust region Newton method to maximize the log-likelihood of the logistic regression model. The proposed method uses only approximate Newton steps in the beginning, but achieves fast convergence in the end. Experiments show that it is faster than the commonly used quasi Newton approach for logistic regression. We also extend the proposed method to large-scale L2-loss linear support vector machines (SVM).