Application of complex extreme learning machine to multiclass classification problems with high dimensionality: A THz spectra classification problem

被引:0
|
作者
Center for Applied Informatics, College of Engineering and Science, Victoria University, VIC [1 ]
8001, Australia
不详 [2 ]
RG6 6AY, United Kingdom
不详 [3 ]
NY
14853, United States
不详 [4 ]
Hong Kong, Hong Kong
机构
来源
Digital Signal Process Rev J | / 1卷 / 40-52期
关键词
Learning systems - Constrained optimization - Knowledge acquisition - Lagrange multipliers - MIMO systems - Calculations - Learning algorithms - Hilbert spaces - Vector spaces;
D O I
暂无
中图分类号
学科分类号
摘要
We extend extreme learning machine (ELM) classifiers to complex Reproducing Kernel Hilbert Spaces (RKHS) where the input/output variables as well as the optimization variables are complex-valued. A new family of classifiers, called complex-valued ELM (CELM) suitable for complex-valued multiple-input-multiple-output processing is introduced. In the proposed method, the associated Lagrangian is computed using induced RKHS kernels, adopting a Wirtinger calculus approach formulated as a constrained optimization problem similarly to the conventional ELM classifier formulation. When training the CELM, the Karush-Khun-Tuker (KKT) theorem is used to solve the dual optimization problem that consists of satisfying simultaneously smallest training error as well as smallest norm of output weights criteria. The proposed formulation also addresses aspects of quaternary classification within a Clifford algebra context. For 2D complex-valued inputs, user-defined complex-coupled hyper-planes divide the classifier input space into four partitions. For 3D complex-valued inputs, the formulation generates three pairs of complex-coupled hyper-planes through orthogonal projections. The six hyper-planes then divide the 3D space into eight partitions. It is shown that the CELM problem formulation is equivalent to solving six real-valued ELM tasks, which are induced by projecting the chosen complex kernel across the different user-defined coordinate planes. A classification example of powdered samples on the basis of their terahertz spectral signatures is used to demonstrate the advantages of the CELM classifiers compared to their SVM counterparts. The proposed classifiers retain the advantages of their ELM counterparts, in that they can perform multiclass classification with lower computational complexity than SVM classifiers. Furthermore, because of their ability to perform classification tasks fast, the proposed formulations are of interest to real-time applications. © 2015 Elsevier Inc. All rights reserved.
引用
收藏
相关论文
共 50 条
  • [1] Application of complex extreme learning machine to multiclass classification problems with high dimensionality: A THz spectra classification problem
    Yin, X. -X
    Hadjiloucas, S.
    He, J.
    Zhang, Y.
    Wang, Y.
    Zhang, D.
    DIGITAL SIGNAL PROCESSING, 2015, 40 : 40 - 52
  • [2] Extreme Learning Machine for Regression and Multiclass Classification
    Huang, Guang-Bin
    Zhou, Hongming
    Ding, Xiaojian
    Zhang, Rui
    IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS PART B-CYBERNETICS, 2012, 42 (02): : 513 - 529
  • [3] Evaluation of the Improved Extreme Learning Machine for Machine Failure Multiclass Classification
    Surantha, Nico
    Gozali, Isabella D.
    ELECTRONICS, 2023, 12 (16)
  • [4] Multiclass covert speech classification using extreme learning machine
    Dipti Pawar
    Sudhir Dhage
    Biomedical Engineering Letters, 2020, 10 : 217 - 226
  • [5] Orthogonal incremental extreme learning machine for regression and multiclass classification
    Li Ying
    Neural Computing and Applications, 2016, 27 : 111 - 120
  • [6] Multiclass covert speech classification using extreme learning machine
    Pawar, Dipti
    Dhage, Sudhir
    BIOMEDICAL ENGINEERING LETTERS, 2020, 10 (02) : 217 - 226
  • [7] Active learning with extreme learning machine for online imbalanced multiclass classification
    Qin, Jiongming
    Wang, Cong
    Zou, Qinhong
    Sun, Yubin
    Chen, Bin
    KNOWLEDGE-BASED SYSTEMS, 2021, 231
  • [8] Orthogonal incremental extreme learning machine for regression and multiclass classification
    Ying, Li
    NEURAL COMPUTING & APPLICATIONS, 2016, 27 (01): : 111 - 120
  • [9] Application of Machine Learning on Brain Cancer Multiclass Classification
    Panca, V.
    Rustam, Z.
    INTERNATIONAL SYMPOSIUM ON CURRENT PROGRESS IN MATHEMATICS AND SCIENCES 2016 (ISCPMS 2016), 2017, 1862
  • [10] LEARNING MULTICLASS CLASSIFICATION PROBLEMS
    WATKIN, TLH
    RAU, A
    BOLLE, D
    VANMOURIK, J
    JOURNAL DE PHYSIQUE I, 1992, 2 (02): : 167 - 180