Title :
Global Nonlinear Kernel Prediction for Large Data Set With a Particle Swarm-Optimized Interval Support Vector Regression
Author :
Yongsheng Ding ; Lijun Cheng ; Pedrycz, Witold ; Kuangrong Hao
Author_Institution :
Eng. Res. Center of Digitized Textile & Apparel Technol., Shanghai, China
Abstract :
A new global nonlinear predictor with a particle swarm-optimized interval support vector regression (PSO-ISVR) is proposed to address three issues (viz., kernel selection, model optimization, kernel method speed) encountered when applying SVR in the presence of large data sets. The novel prediction model can reduce the SVR computing overhead by dividing input space and adaptively selecting the optimized kernel functions to obtain optimal SVR parameter by PSO. To quantify the quality of the predictor, its generalization performance and execution speed are investigated based on statistical learning theory. In addition, experiments using synthetic data as well as the stock volume weighted average price are reported to demonstrate the effectiveness of the developed models. The experimental results show that the proposed PSO-ISVR predictor can improve the computational efficiency and the overall prediction accuracy compared with the results produced by the SVR and other regression methods. The proposed PSO-ISVR provides an important tool for nonlinear regression analysis of big data.
Keywords :
generalisation (artificial intelligence); learning (artificial intelligence); particle swarm optimisation; regression analysis; statistical analysis; stock markets; support vector machines; Big Data; PSO-ISVR; PSO-ISVR predictor; SVR computing overhead; adaptively optimized kernel function selection; computational efficiency improvement; execution speed; generalization performance; global nonlinear kernel prediction; input space; kernel method speed; kernel selection; large-data set; model optimization; nonlinear regression analysis; optimal SVR parameter; overall prediction accuracy improvement; particle swarm-optimized interval support vector regression; predictor quality quantification; statistical learning theory; stock volume weighted average price; synthetic data; Adaptation models; Algorithm design and analysis; Kernel; Optimization; Prediction algorithms; Support vector machines; Switches; Global nonlinear predictor; interval support vector regression (ISVR); kernel function; large data; particle swarm optimization (PSO); sliding adaptive model; sliding adaptive model.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2015.2426182