ε-SSVR:: A smooth support vector machine for ε-insensitive regression

被引:114
作者
Lee, YJ [1 ]
Hsieh, WF
Huang, CM
机构
[1] Natl Taiwan Univ, Dept Comp Sci & Informat Engn, Taipei 106, Taiwan
[2] Natl Chung Cheng Univ, Dept Comp Sci & Informat Engn, Chiayi 621, Taiwan
关键词
epsilon-insensitive loss function; epsilon-smooth support vector regression; kernel method; Newton-Armijo algorithm; support vector machine;
D O I
10.1109/TKDE.2005.77
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
A new smoothing strategy for solving epsilon-support vector regression (epsilon-SVR), tolerating a small error in fitting a given data set linearly or nonlinearly, is proposed in this paper. Conventionally, epsilon-SVR is formulated as a constrained minimization problem, namely, a convex quadratic programming problem. We apply the smoothing techniques that have been used for solving the support vector machine for classification, to replace the epsilon- insensitive loss function by an accurate smooth approximation. This will allow us to solve epsilon-SVR as an unconstrained minimization problem directly. We term this reformulated problem as epsilon-smooth support vector regression (epsilon-SSVR). We also prescribe a Newton-Armijo algorithm that has been shown to be convergent globally and quadratically to solve our epsilon-SSVR. In order to handle the case of nonlinear regression with a massive data set, we also introduce the reduced kernel technique in this paper to avoid the computational difficulties in dealing with a huge and fully dense kernel matrix. Numerical results and comparisons are given to demonstrate the effectiveness and speed of the algorithm.
引用
收藏
页码:678 / 685
页数:8
相关论文
共 50 条
  • [21] Mean field method for the support vector machine regression
    Gao, JB
    Gunn, SR
    Harris, CJ
    [J]. NEUROCOMPUTING, 2003, 50 : 391 - 405
  • [22] Weighted quantile regression via support vector machine
    Xu, Qifa
    Zhang, Jinxiu
    Jiang, Cuixia
    Huang, Xue
    He, Yaoyao
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2015, 42 (13) : 5441 - 5451
  • [23] TSVR: An efficient Twin Support Vector Machine for regression
    Peng Xinjun
    [J]. NEURAL NETWORKS, 2010, 23 (03) : 365 - 372
  • [24] A Novel Smooth Support Vector Regression based on CHKS Function
    Wu, Qing
    [J]. FRONTIERS OF MANUFACTURING AND DESIGN SCIENCE, PTS 1-4, 2011, 44-47 : 3746 - 3751
  • [25] A Novel Smooth Support Vector Regression Based On Taylor Formula
    Ren, Bin
    Cheng, LiangLun
    [J]. INFORMATION-AN INTERNATIONAL INTERDISCIPLINARY JOURNAL, 2012, 15 (01): : 23 - 32
  • [26] CLASSIFICATION OF HEART FAILURE WITH POLYNOMIAL SMOOTH SUPPORT VECTOR MACHINE
    Yuan, Yu-Bo
    Qiu, Wen-Qiang
    Wang, Ying-Jie
    Gao, Ju
    He, Ping
    [J]. PROCEEDINGS OF 2017 INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND CYBERNETICS (ICMLC), VOL 1, 2017, : 48 - 54
  • [27] Least squares support vector machine regression with additional constrains
    Ye Hong
    Sun, Bing-Yu
    Wang, Ru Jing
    [J]. PROCEEDINGS OF 2006 INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE: 50 YEARS' ACHIEVEMENTS, FUTURE DIRECTIONS AND SOCIAL IMPACTS, 2006, : 682 - 684
  • [28] Support vector machine for classification and regression of coastal sediment transport
    Shafaghat M.
    Dezvareh R.
    [J]. Arabian Journal of Geosciences, 2021, 14 (19)
  • [29] Stochastic Support Vector Machine for Classifying and Regression of Random Variables
    Maryam Abaszade
    Sohrab Effati
    [J]. Neural Processing Letters, 2018, 48 : 1 - 29
  • [30] Least Squares Support Vector Machine Regression with Equality Constraints
    Liu, Kun
    Sun, Bing-Yu
    [J]. INTERNATIONAL CONFERENCE ON APPLIED PHYSICS AND INDUSTRIAL ENGINEERING 2012, PT C, 2012, 24 : 2227 - 2230