Interval twin support vector regression algorithm for interval input-output data

被引:0
|
作者
Xinjun Peng
Dongjing Chen
Lingyan Kong
Dong Xu
机构
[1] Shanghai Normal University,Department of Mathematics
[2] Scientific Computing Key Laboratory of Shanghai Universities,undefined
关键词
Support vector regression; Interval input-output data ; Hausdorff distance; Nonparallel functions; Interval twin support vector regression;
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学科分类号
摘要
It is necessary to use interval data to define terms or describe extreme behaviors because of the existence of uncertainty in many real-world problems. In this paper, a novel efficient interval twin support vector regression (ITSVR) is proposed to handle such interval data. This ITSVR employs two nonparallel functions to identify the upper and lower sides of the interval output data, respectively, in which the Hausdorff distance is incorporated into the Gaussian kernel as the interval kernel for interval input data. Compared with other support vector regression (SVR)-based interval regression methods, such as the interval support vector interval regression networks (ISVIRN), this ITSVR algorithm is more efficient since only two smaller-sized QPPs are solved, respectively. The experimental results on several artificial datasets and three stock index datasets show the validity of ITSVR.
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页码:719 / 732
页数:13
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