Volume 80, Issue 1
Original Article

Another look at distance‐weighted discrimination

Boxiang Wang

University of Minnesota, Minneapolis, USA

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Hui Zou

Corresponding Author

E-mail address: zouxx019@umn.edu

University of Minnesota, Minneapolis, USA

Address for correspondence: Hui Zou, School of Statistics, University of Minnesota, 224 Church Street South East, Minneapolis, MN 55455, USA. E‐mail: zouxx019@umn.eduSearch for more papers by this author
First published: 16 August 2017
Citations: 19

Summary

Distance‐weighted discrimination (DWD) is a modern margin‐based classifier with an interesting geometric motivation. It was proposed as a competitor to the support vector machine (SVM). Despite many recent references on DWD, DWD is far less popular than the SVM, mainly because of computational and theoretical reasons. We greatly advance the current DWD methodology and its learning theory. We propose a novel thrifty algorithm for solving standard DWD and generalized DWD, and our algorithm can be several hundred times faster than the existing state of the art algorithm based on second‐order cone programming. In addition, we exploit the new algorithm to design an efficient scheme to tune generalized DWD. Furthermore, we formulate a natural kernel DWD approach in a reproducing kernel Hilbert space and then establish the Bayes risk consistency of the kernel DWD by using a universal kernel such as the Gaussian kernel. This result solves an open theoretical problem in the DWD literature. A comparison study on 16 benchmark data sets shows that data‐driven generalized DWD consistently delivers higher classification accuracy with less computation time than the SVM.

Number of times cited according to CrossRef: 19

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