A step loss function based SVM classifier for binary classification

Date

2018-1

Type

Conference paper

Conference title

Elsevier

Issue

Vol. 0 No. 141

Author(s)

Mahmud Mansour
Fethi Jarray
Sabri Boughorbel,

Pages

9 - 15

Abstract

In this paper, we propose a new cost function, step loss, for support vector machine classifiers based on a deep distinction between the instances. It takes into account the position of the samples with the margin. More precisely, we divide the instances into four categories: i) instances correctly classified and lies outside the margin, ii) instances well classified and lies within the margin, iii) instances misclassified and lies within the margin and iv) instances misclassified and lies outside the margin. The the step loss assign a constant cost for each group of instances. By this it is more general than the hard margin cost that divide the instances into two categories. It will be also more robust to the outliers than the soft margin because the instances of the fourth group have a constant cost contrary to the hinge cost where the misclassified instances have a linear cost. It will be more accurate than the Ramp loss because it …

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