A sparse algorithm for adaptive pruning least square support vector regression machine based on global representative point ranking

被引:7
|
作者
Hu Lei [1 ]
Yi Guoxing [1 ]
Huang Chao [1 ]
机构
[1] Harbin Inst Technol, Sch Astronaut, Harbin 150001, Peoples R China
关键词
least square support vector regression (LSSVR); global representative point ranking (GRPR); initial training dataset; pruning strategy; sparsity; regression accuracy; CROSS-VALIDATION;
D O I
10.23919/JSEE.2021.000014
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Least square support vector regression (LSSVR) is a method for function approximation, whose solutions are typically non-sparse, which limits its application especially in some occasions of fast prediction. In this paper, a sparse algorithm for adaptive pruning LSSVR algorithm based on global representative point ranking (GRPR-AP-LSSVR) is proposed. At first, the global representative point ranking (GRPR) algorithm is given, and relevant data analysis experiment is implemented which depicts the importance ranking of data points. Furthermore, the pruning strategy of removing two samples in the decremental learning procedure is designed to accelerate the training speed and ensure the sparsity. The removed data points are utilized to test the temporary learning model which ensures the regression accuracy. Finally, the proposed algorithm is verified on artificial datasets and UCI regression datasets, and experimental results indicate that, compared with several benchmark algorithms, the GRPR-AP-LSSVR algorithm has excellent sparsity and prediction speed without impairing the generalization performance.
引用
下载
收藏
页码:151 / 162
页数:12
相关论文
共 50 条
  • [41] An Improved Least Square Support Vector Regression Algorithm for Traffic Flow Forecasting
    Lou, Wanqiu
    Zhou, Yingjie
    Sheng, Peng
    Wang, Junfeng
    2014 IEEE 17TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), 2014, : 2379 - 2384
  • [42] Householder transformation based sparse least squares support vector regression
    Zhao, Yong-Ping
    Li, Bing
    Li, Ye-Bo
    Wang, Kang-Kang
    NEUROCOMPUTING, 2015, 161 : 243 - 253
  • [43] Intelligent fetal state assessment based on genetic algorithm and least square support vector machine
    Zhang, Yang
    Zhao, Zhidong
    Ye, Haihui
    Shengwu Yixue Gongchengxue Zazhi/Journal of Biomedical Engineering, 2019, 36 (01): : 131 - 139
  • [44] Craniofacial Reconstruction based on-Least Square Support Vector Regression
    Li, Yan
    Chang, Liang
    Qiao, Xuejun
    Liu, Rong
    Duan, Fuqing
    2014 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN AND CYBERNETICS (SMC), 2014, : 1147 - 1151
  • [45] Least Square-Support Vector Regression based Car-following Model with Sparse Sample Selection
    Wei, Dali
    Chen, Feng
    Zhang, Tongshuang
    2010 8TH WORLD CONGRESS ON INTELLIGENT CONTROL AND AUTOMATION (WCICA), 2010, : 1701 - 1707
  • [46] A least square support vector machine-based approach for contingency classification and ranking in a large power system
    Soni, Bhanu Pratap
    Saxena, Akash
    Gupta, Vikas
    COGENT ENGINEERING, 2016, 3 (01):
  • [47] Prognostics of Induction Motor Shaft Based on Feature Importance and Least Square Support Vector Machine Regression
    Susilo, D. D.
    Widodo, A.
    Prahasto, T.
    Nizam, M.
    INTERNATIONAL JOURNAL OF AUTOMOTIVE AND MECHANICAL ENGINEERING, 2021, 18 (01) : 8464 - 8477
  • [48] Classification Model of Seed Cotton Grade Based on Least Square Support Vector Machine Regression Method
    Si Chen
    Ling Li-na
    Yuan Rong-chang
    Sun Long-qing
    2012 IEEE 6TH INTERNATIONAL CONFERENCE ON INFORMATION AND AUTOMATION FOR SUSTAINABILITY (ICIAFS2012), 2012, : 194 - +
  • [49] Semi-supervised learning algorithm with a least square support vector machine
    College of Computer Science and Technology, Harbin Engineering University, Harbin 150001, China
    Harbin Gongcheng Daxue Xuebao, 2008, 10 (1088-1092):
  • [50] SMO-based pruning methods for sparse least squares support vector machines
    Zeng, XY
    Chen, XW
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2005, 16 (06): : 1541 - 1546