Robust Parametric Twin Support Vector Machine for Pattern Classification

作者:Reshma Rastogi, Sweta Sharma, Suresh Chandra

摘要

In this paper, we propose a robust parametric twin support vector machine (RPTWSVM) classifier based on Parametric-\(\nu \)-Support Vector Machine (Par-\(\nu \)-SVM) and twin support vector machine. In order to capture heteroscedastic noise present in the training data, RPTWSVM finds a pair of parametric margin hyperplanes that automatically adjusts the parametric insensitive margin to incorporate the structural information of data. The proposed model of RPTWSVM is not only useful in controlling the heteroscedastic noise but also has much faster training speed when compared to Par-\(\nu \)-SVM. Experimental results on several machine learning benchmark datasets show the advantages of RPTWSVM both in terms of generalization ability and training speed over other related models.

论文关键词:Twin support vector machines, Parametric twin support vector machine, Hetroscedastic noise, Parametric insensitive model, Multi-category classification

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论文官网地址:https://doi.org/10.1007/s11063-017-9633-3