Title of article
A new method of linear support vector regression with interval data
Author/Authors
Baymani, Mojtaba Applied Mathematics - Quchan University of Technology, Quchan , Saffaran, Hoda Department of Computer - Engineering Faculty - Ferdowsi University of Mashhad, Mashhad , Salehi-M., Nima Department of Computer - Engineering Faculty - Ferdowsi University of Mashhad, Mashhad
Pages
12
From page
857
To page
868
Abstract
In this paper, the linear support vector regression approach is proposed for solving the regression problem with interval data, which is called interval support vector regression(ISVR). The ISVR approach is equivalent to solving a linear constrained quadratic programming problem (QPP) with an interval cost coefficient in which the value of the objective function is in an interval. Instead of solving an interval QPP, we solve two QPPs and prove that the cost values of these two problems are the lower bound and the upper bound of the target value of the interval QPP. We show these two mentioned QPPs are equivalent to two support vector regression problems which the first problem applies the lower bound of data and the second problem considers the upper bound of the data. to obtain the regression function. Some experiments are made to demonstrate the performance of our method compared with the known algorithms on several artificial, benchmark and real practical datasets.
Keywords
Quadratic programming , Computing methodologies and applications , Linear regression
Journal title
International Journal of Nonlinear Analysis and Applications
Serial Year
2021
Record number
2701654
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