A novel algorithm for classification using a low rank approximation of kernel-based support vector machines with applications

被引:0
|
作者
Chatrabgoun, O. [1 ,2 ]
Esmaeilbeigi, M. [3 ]
Daneshkhah, A. [1 ,4 ]
Kamandi, A. [5 ]
Salimi, N. [6 ]
机构
[1] Coventry Univ, Sch Comp Elect & Math, Coventry, England
[2] Malayer Univ, Fac Math Sci & Stat, Dept Stat, Malayer, Iran
[3] Malayer Univ, Fac Math Sci & Stat, Dept Math, Malayer, Iran
[4] Coventry Univ, Res Ctr Computat Sci & Math Modelling, Coventry, England
[5] Univ Sci & Technol Mazandaran, Dept Math, Behshahr, Iran
[6] Arak Univ, Fac Engn, Dept Comp Engn, Arak, Iran
关键词
Kernel-based SVMs; Machine learning; Promoter recognition; Quadratic optimization problem; S&P 500 index; Truncated Mercer series;
D O I
10.1080/03610918.2023.2236816
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Support vector machines (SVMs), as a powerful technique for classification, are becoming increasingly popular in a wide range of applications. This is simply due to their robustness against several types of model assumptions violations and outliers. The Kernel-based SVM are very useful to capture non-linear patterns in the data, and for classification. However, this kernel-based method could become computationally very challenging because it increases the required time to train data. This increase in computational time is mainly due to the appearance of the kernel in solving the quadratic optimization problem (QOP). In order to tackle this computational complexity, we propose a novel method based on the low-rank approximation, by adapting a truncated Mercer series to the kernels. The quadratic optimization problem in the structure of kernel-based SVM will then be replaced with a much simpler optimization problem. In the proposed approach, the required time for the vector computations and matrix decompositions will be much faster such that these changes lead to efficiently resolve the QOP and ultimately increase efficiency in classification. We finally present some numerical illustrations based on the ROC curves and other classification performance benchmarks considered in this paper to assess the performance of the proposed low-rank approximation to the kernel in SVM structure. The results suggest considerable efficiency improvement has been observed in classification with significant reduction in computational time required to train and forecast the stock market index (S & P 500 index) and promoter recognition in DNA sequences.
引用
收藏
页码:6591 / 6611
页数:21
相关论文
共 50 条
  • [31] Using a novel support vector machines for efficient classification
    Yong Wang
    Wei Zhang
    Jun Chen
    Li Xiao
    Jianfu Li
    [J]. ICMIT 2007: MECHATRONICS, MEMS, AND SMART MATERIALS, PTS 1 AND 2, 2008, 6794
  • [32] A distance-based kernel for classification via Support Vector Machines
    Amaya-Tejera, Nazhir
    Gamarra, Margarita
    Velez, Jorge I.
    Zurek, Eduardo
    [J]. FRONTIERS IN ARTIFICIAL INTELLIGENCE, 2024, 7
  • [33] Weighted Radial Basis Function Kernel-Based Support Vector Machines for Multispectral Magnetic Resonance Brain Image Classification
    Chen, Clayton Chi-Chang
    Chen, Shih-Yu
    Chen, Hsian-Min
    Lin, Bor-Hung
    Ouyang, Yen-Chieh
    Chai, Jyh-Wen
    Yang, Ching-Wen
    Lee, San-Kan
    Chang, Chein-I
    [J]. INTELLIGENT SYSTEMS AND APPLICATIONS (ICS 2014), 2015, 274 : 1970 - 1982
  • [34] Scalable Kernel-based Learning via Low-rank Approximation of Lifted Data
    Sheikholeslami, Fatemeh
    Giannakis, Georgios B.
    [J]. 2017 55TH ANNUAL ALLERTON CONFERENCE ON COMMUNICATION, CONTROL, AND COMPUTING (ALLERTON), 2017, : 596 - 603
  • [35] Asymptotic error bounds for kernel-based Nystrom low-rank approximation matrices
    Chang, Lo-Bin
    Bai, Zhidong
    Huang, Su-Yun
    Hwang, Chii-Ruey
    [J]. JOURNAL OF MULTIVARIATE ANALYSIS, 2013, 120 : 102 - 119
  • [36] Accelerated Dynamic MRI Using Kernel-Based Low Rank Constraint
    Arif, Omar
    Afzal, Hammad
    Abbas, Haider
    Amjad, Muhammad Faisal
    Wan, Jiafu
    Nawaz, Raheel
    [J]. JOURNAL OF MEDICAL SYSTEMS, 2019, 43 (08)
  • [37] Vicinal support vector classifier using supervised kernel-based clustering
    Yang, Xulei
    Cao, Aize
    Song, Qing
    Schaefer, Gerald
    Su, Yi
    [J]. ARTIFICIAL INTELLIGENCE IN MEDICINE, 2014, 60 (03) : 189 - 196
  • [38] Susceptibility mapping of shallow landslides using kernel-based Gaussian process, support vector machines and logistic regression
    Colkesen, Ismail
    Sahin, Emrehan Kutlug
    Kavzoglu, Taskin
    [J]. JOURNAL OF AFRICAN EARTH SCIENCES, 2016, 118 : 53 - 64
  • [39] Accelerated Dynamic MRI Using Kernel-Based Low Rank Constraint
    Omar Arif
    Hammad Afzal
    Haider Abbas
    Muhammad Faisal Amjad
    Jiafu Wan
    Raheel Nawaz
    [J]. Journal of Medical Systems, 2019, 43
  • [40] Speech classification based on cuckoo algorithm and support vector machines
    Shi, Wenlei
    Fan, Xinhai
    [J]. 2017 2ND IEEE INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND APPLICATIONS (ICCIA), 2017, : 98 - 102