A complex-valued neuro-fuzzy inference system and its learning mechanism

被引:53
作者
Subramanian, K. [1 ]
Savitha, R. [1 ]
Suresh, S. [1 ]
机构
[1] Nanyang Technol Univ, Sch Comp Engn, Ctr Computat Intelligence, Singapore 639798, Singapore
关键词
Complex-valued neural network; Fuzzy inference system; Wirtinger calculus; Meta-cognition; Self-regulation; BASIS FUNCTION NETWORK; ALGORITHM; IDENTIFICATION; POWER;
D O I
10.1016/j.neucom.2013.06.009
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this paper, we present a complex-valued neuro-fuzzy inference system (CNFIS) and develop its meta-cognitive learning algorithm. CNFIS has four layers - an input layer with m rules, a Gaussian layer with K rules, a normalization layer with K rules and an output layer with n rules. The rules in the Gaussian layer map the m-dimensional complex-valued input features to a K-dimensional real-valued space. Hence, we use the Wirtinger calculus to obtain the complex-valued gradients of the real-valued function in deriving the learning algorithm of CNFIS. Next, we also develop the meta-cognitive learning algorithm for CNFIS referred to as "meta-cognitive complex-valued neuro-fuzzy inference system (MCNFIS)". CNFIS is the cognitive component of MCNFIS and a self-regulatory learning mechanism that decides what-to-learn, how-to-learn, and when-to-learn in a meta-cognitive framework is its meta-cognitive component. Thus, for every epoch of the learning process, the meta-cognitive component decides if each sample in the training set must be deleted or used to update the parameters of CNFIS or to be reserved for future use. The performances of CNFIS and MCNFIS are studied on a set of approximation and real-valued classification problems, in comparison to existing complex-valued learning algorithms in the literature. First, we evaluate the approximation performances of CNFIS and MCNFIS on a synthetic complex-valued function approximation problem, an adaptive beam-forming problem and a wind prediction problem. Finally, we study the decision making performance of CNFIS and MCNFIS on a set of benchmark real-valued classification problems from the UCI machine learning repository. Performance study results on approximation and real-valued classification problems show that CNFIS and MCNFIS outperform existing algorithms in the literature. (C) 2013 Published by Elsevier B.V.
引用
收藏
页码:110 / 120
页数:11
相关论文
共 55 条
  • [1] Blur identification by multilayer neural network based on multivalued neurons
    Aizenberg, Igor
    Paliy, Dmitriy V.
    Zurada, Jacek M.
    Astola, Jaakko T.
    [J]. IEEE TRANSACTIONS ON NEURAL NETWORKS, 2008, 19 (05): : 883 - 898
  • [2] Multilayer feedforward neural network based on multi-valued neurons (MLMVN) and a backpropagation learning algorithm
    Aizenberg, Igor
    Moraga, Claudio
    [J]. SOFT COMPUTING, 2007, 11 (02) : 169 - 183
  • [3] Orthogonal least squares based complex-valued functional link network
    Amin, Md. Faijul
    Savitha, Ramasamy
    Amin, Muhammad Ilias
    Murase, Kazuyuki
    [J]. NEURAL NETWORKS, 2012, 32 : 257 - 266
  • [4] Single-layered complex-valued neural network for real-valued classification problems
    Amin, Md. Faijul
    Murase, Kazuyuki
    [J]. NEUROCOMPUTING, 2009, 72 (4-6) : 945 - 955
  • [5] Meta-cognitive Neural Network for classification problems in a sequential learning framework
    Babu, G. Sateesh
    Suresh, S.
    [J]. NEUROCOMPUTING, 2012, 81 : 86 - 96
  • [6] ON THE COMPLEX BACKPROPAGATION ALGORITHM
    BENVENUTO, N
    PIAZZA, F
    [J]. IEEE TRANSACTIONS ON SIGNAL PROCESSING, 1992, 40 (04) : 967 - 968
  • [7] Blake C. L., 1998, Uci repository of machine learning databases
  • [8] Analysis, synthesis, and diagnostics of antenna arrays through complex-valued neural networks
    Brégains, JC
    Ares, F
    [J]. MICROWAVE AND OPTICAL TECHNOLOGY LETTERS, 2006, 48 (08) : 1512 - 1515
  • [9] COMPLEX-VALUED RADIAL BASIS FUNCTION NETWORK .1. NETWORK ARCHITECTURE AND LEARNING ALGORITHMS
    CHEN, S
    MCLAUGHLIN, S
    MULGREW, B
    [J]. SIGNAL PROCESSING, 1994, 35 (01) : 19 - 31
  • [10] SUPPORT-VECTOR NETWORKS
    CORTES, C
    VAPNIK, V
    [J]. MACHINE LEARNING, 1995, 20 (03) : 273 - 297