Back to Search Start Over

Chance constrained conic-segmentation support vector machine with uncertain data

Authors :
Peng, Shen
Canessa, Gianpiero
Allen-Zhao, Zhihua
Publication Year :
2021

Abstract

Support vector machines (SVM) is one of the well known supervised classes of learning algorithms. Furthermore, the conic-segmentation SVM (CS-SVM) is a natural multiclass analogue of the standard binary SVM, as CS-SVM models are dealing with the situation where the exact values of the data points are known. This paper studies CS-SVM when the data points are uncertain or mislabelled. With some properties known for the distributions, a chance-constrained CS-SVM approach is used to ensure the small probability of misclassification for the uncertain data. The geometric interpretation is presented to show how CS-SVM works. Finally, we present experimental results to investigate the chance constrained CS-SVM's performance.<br />Comment: Accepted paper for Annals of Mathematics and Artificial Intelligence

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2107.13319
Document Type :
Working Paper