Title : ( Least squares twin multi-class classification support vector machine )
Authors: Jalal A. Nasiri , Nasrollah Moghadam Charkari , Saeed Jalili ,Abstract
Twin K-class support vector classification (Twin-KSVC) is a novel multi-class method based on twin support vector machine (TWSVM). In this paper, we formulate a least squares version of Twin-KSVC called as LST-KSVC. This formulation leads to extremely simple and fast algorithm. LST-KSVC, same as the Twin-KSVC, evaluates all the training data into a “1-versus-1-versus-rest” structure, so it generates ternary output {−1, 0, +1}. In LST-KSVC, the solution of the two modified primal problems is reduced to solving only two systems of linear equations whereas Twin-KSVC needs to solve two quadratic programming problems (QPPs) along with two systems of linear equations. Our experiments on UCI and face datasets indicate that the proposed method has comparable accuracy in classification to that of Twin-KSVC but with remarkably less computational time. Also, because of the structure “1-versus-1-versus-rest”, the classification accuracy of LST-KSVC is higher than typical multi-class method based on SVMs.
Keywords
, Twin support vector machine Least squares Multi, class classification Nonparallel plane K, SVCR@article{paperid:1097183,
author = {Nasiri, Jalal A. and نصراله مقدم چرکری and سعید جلیلی},
title = {Least squares twin multi-class classification support vector machine},
journal = {Pattern Recognition},
year = {2015},
volume = {48},
number = {3},
month = {March},
issn = {0031-3203},
pages = {984--992},
numpages = {8},
keywords = {Twin support vector machine
Least squares
Multi-class classification
Nonparallel plane
K-SVCR},
}
%0 Journal Article
%T Least squares twin multi-class classification support vector machine
%A Nasiri, Jalal A.
%A نصراله مقدم چرکری
%A سعید جلیلی
%J Pattern Recognition
%@ 0031-3203
%D 2015