Ridge-Adjusted Slack Variable Optimization for Supervised Classification
Paper in proceeding, 2013

This paper presents an iterative classification algorithm called Ridge-adjusted Slack Variable Optimization (RiSVO). RiSVO is an iterative procedure with two steps: (1) A working subset of the training data is selected so as to reject "extreme" patterns. (2) the decision vector and threshold value are obtained by minimizing the energy function associated with the slack variables. From a computational perspective, we have established a sufficient condition for the "inclusion property" among successive working sets, which allows us to save computation time. Most importantly, under the inclusion property, the monotonic reduction of the energy function can be assured in both substeps at each iteration, thus assuring the convergence of the algorithm. Moreover, ridge regularization is incorporated to improve the robustness and better cope with over-fitting and ill-conditioned problems. To verify the proposed algorithm, we conducted simulations on three data sets from the UCI database: adult, shuttle and bank. Our simulation shows stability and convergence of the RiSVO method. The results also show improvement of performance over the SVM classifier.

slack energy minimization

training data selection

classification

kernel method

ridge-regression

Author

Yinan Yu

Chalmers, Signals and Systems, Signal Processing and Biomedical Engineering

Konstantinos I. Diamantaras

TEI of Thessaloniki

Tomas McKelvey

Chalmers, Signals and Systems, Signal Processing and Biomedical Engineering

S.Y. Kung

Princeton University

IEEE International Workshop on Machine Learning for Signal Processing, MLSP

21610363 (ISSN) 21610371 (eISSN)

6661982
978-1-4799-1180-6 (ISBN)

Subject Categories

Electrical Engineering, Electronic Engineering, Information Engineering

DOI

10.1109/MLSP.2013.6661982

ISBN

978-1-4799-1180-6

More information

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