Large-Scale Elastic Net Regularized Linear Classification SVMs and Logistic Regression


Autoria(s): Balamurugan, P
Data(s)

2013

Resumo

Elastic Net Regularizers have shown much promise in designing sparse classifiers for linear classification. In this work, we propose an alternating optimization approach to solve the dual problems of elastic net regularized linear classification Support Vector Machines (SVMs) and logistic regression (LR). One of the sub-problems turns out to be a simple projection. The other sub-problem can be solved using dual coordinate descent methods developed for non-sparse L2-regularized linear SVMs and LR, without altering their iteration complexity and convergence properties. Experiments on very large datasets indicate that the proposed dual coordinate descent - projection (DCD-P) methods are fast and achieve comparable generalization performance after the first pass through the data, with extremely sparse models.

Formato

application/pdf

Identificador

http://eprints.iisc.ernet.in/48967/1/ieee_13th_int_con_dat_min_949_2013.pdf

Balamurugan, P (2013) Large-Scale Elastic Net Regularized Linear Classification SVMs and Logistic Regression. In: IEEE 13th International Conference on Data Mining (ICDM), DEC 07-10, 2013, Dallas, TX, pp. 949-954.

Publicador

IEEE

Relação

http://dx.doi.org/10.1109/ICDM.2013.126

http://eprints.iisc.ernet.in/48967/

Palavras-Chave #Computer Science & Automation (Formerly, School of Automation)
Tipo

Conference Proceedings

NonPeerReviewed