Neo-Fuzzy Supported Brain Emotional Learning Based Pattern Recognizer for Classification Problems

Based on the limbic system theory of mammalian emotional brain, supervised brain emotional learning-based pattern recognizer (BELPR) has been recently proposed for multi-input and multi-output classification problems. It offers features like: decreased time and spatial complexity, faster training and higher accuracy. BELPR has been deployed to classify a number of benchmark datasets and has demonstrated its superior performance compared with the conventional multilayer perceptron network. The goal of this paper is to further enhance the classification accuracy of BELPR through integration with Neo-Fuzzy Neurons (NFN). The network built using NFN shares many of the same characteristics as BELPR, such as: simplicity, transparency, accuracy, and lower computational complexity. With this view in mind, this paper proposes a new neuro-fuzzy hybrid classification network: Neo-Fuzzy supported brain emotional learning-based pattern recognizer (NFBELPR), which will preserve the features of both networks, while simultaneously improving the performance of BELPR. The NFBELPR model can be considered as a group of two networks depending upon the level of integration of NFN and BELPR. When the integration of NFN is only considered in the orbitofrontal cortex section of BELPR, the resulting classification model is termed as partially integrated NFBELPR. In cases, when the integration is considered both in the OFC and amygdala sections of BELPR, the resulting classification model becomes fully integrated NFBELPR. The proposed NFBELPR networks are implemented in MATLAB®R2009b programming environment to classify a number of benchmark datasets. They are found to achieve higher classification accuracy when compared with BELPR and some state of the art classification networks.

[1]  Joseph E LeDoux Emotion Circuits in the Brain , 2000 .

[2]  Illya Kokshenev,et al.  An adaptive learning algorithm for a neo fuzzy neuron , 2003, EUSFLAT Conf..

[3]  Mohammad Javad Yazdanpanah,et al.  Applying brain emotional learning algorithm for multivariable control of HVAC systems , 2006, J. Intell. Fuzzy Syst..

[4]  G R Arab Markadeh,et al.  Speed and Flux Control of Induction Motors Using Emotional Intelligent Controller , 2011, IEEE Transactions on Industry Applications.

[5]  Ehsan Lotfi,et al.  Practical emotional neural networks , 2014, Neural Networks.

[6]  Jason Gu,et al.  A novel method for traffic sign recognition based on extreme learning machine , 2014, Proceeding of the 11th World Congress on Intelligent Control and Automation.

[7]  Ehsan Lotfi,et al.  Adaptive brain emotional decayed learning for online prediction of geomagnetic activity indices , 2014, Neurocomputing.

[8]  Babak Nadjar Araabi,et al.  INTELLIGENT MODELING AND CONTROL OF WASHING MACHINE USING LOCALLY LINEAR NEURO-FUZZY (LLNF) MODELING AND MODIFIED BRAIN EMOTIONAL LEARNING BASED INTELLIGENT CONTROLLER (BELBIC) , 2008 .

[9]  Ehsan Lotfi,et al.  Gene expression microarray classification using PCA-BEL , 2014, Comput. Biol. Medicine.

[10]  Peng Shi,et al.  Adaptive tracking control for switched stochastic nonlinear systems with unknown actuator dead-zone , 2015, Autom..

[11]  Miguel Delgado Prieto,et al.  Industrial Time Series Modelling by Means of the Neo-Fuzzy Neuron , 2016, IEEE Access.

[12]  Duc Truong Pham,et al.  Control chart pattern clustering using a new self-organizing spiking neural network , 2008 .

[13]  J. Morén,et al.  A computational model of emotional learning in the amygdala. , 2000 .

[14]  Chih-Ming Chen,et al.  An efficient fuzzy classifier with feature selection based on fuzzy entropy , 2001, IEEE Trans. Syst. Man Cybern. Part B.

[15]  Oleksii K. Tyshchenko,et al.  An Extended Neo-Fuzzy Neuron and its Adaptive Learning Algorithm , 2016, ArXiv.

[16]  Xiaomei Qi,et al.  Robust fault detection filter for nonlinear networked control system* , 2018, 2018 Chinese Automation Congress (CAC).

[17]  Xiaoping Liu,et al.  Adaptive fuzzy tracking control for a class of pure-feedback stochastic nonlinear systems with non-lower triangular structure , 2016, Fuzzy Sets Syst..

[18]  Caro Lucas,et al.  Motion Control of Omni-Directional Three-Wheel Robots by Brain-Emotional-Learning-Based Intelligent Controller , 2010, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[19]  Duc Truong Pham,et al.  Unsupervised adaptive resonance theory neural networks for control chart pattern recognition , 2001 .

[20]  Azuraliza Abu Bakar,et al.  Comparative Analysis of Algorithms in Supervised Classification: A Case study of Bank Notes Dataset , 2014 .

[21]  Peng Shi,et al.  Intelligent Tracking Control for a Class of Uncertain High-Order Nonlinear Systems , 2016, IEEE Transactions on Neural Networks and Learning Systems.

[22]  Nor Ashidi Mat Isa,et al.  A genetic algorithm-based multi-objective optimization of an artificial neural network classifier for breast cancer diagnosis , 2013, Neural Computing and Applications.

[23]  TSUTOMU MIKI Analog Implementation of Neo-Fuzzy Neuron and Its On-board Learning , 1999 .

[24]  Christian Balkenius,et al.  EMOTIONAL LEARNING: A COMPUTATIONAL MODEL OF THE AMYGDALA , 2001, Cybern. Syst..

[25]  Duc Truong Pham,et al.  Control chart pattern recognition using a new type of self-organizing neural network , 1998 .

[26]  Ehsan Lotfi,et al.  BRAIN EMOTIONAL LEARNING-BASED PATTERN RECOGNIZER , 2013, Cybern. Syst..

[27]  Subhojit Ghosh,et al.  Jaya Based ANFIS for Monitoring of Two Class Motor Imagery Task , 2016, IEEE Access.

[28]  Jason Jianjun Gu,et al.  Deep Neural Networks for wireless localization in indoor and outdoor environments , 2016, Neurocomputing.

[29]  M.M.B.R. Vellasco,et al.  Inverted hierarchical neuro-fuzzy BSP system: a novel neuro-fuzzy model for pattern classification and rule extraction in databases , 2006, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[30]  Ehsan Lotfi,et al.  A Neural Basis Computational Model of Emotional Brain for Online Visual Object Recognition , 2014, Appl. Artif. Intell..

[31]  Seref Sagiroglu,et al.  Training multilayered perceptrons for pattern recognition: a comparative study of four training algorithms , 2001 .

[32]  O. Mangasarian,et al.  Multisurface method of pattern separation for medical diagnosis applied to breast cytology. , 1990, Proceedings of the National Academy of Sciences of the United States of America.

[33]  Caro Lucas,et al.  Real Time Emotional Control for Anti-Swing and Positioning Control of SIMO Overhead Traveling Crane , 2008 .

[34]  Kemal Tutuncu,et al.  Qualitative Bankruptcy Prediction Rules Using Artificial Intelligence Techniques , 2014 .

[35]  Haibo Wang,et al.  Chinese sign language recognition with 3D hand motion trajectories and depth images , 2014, Proceeding of the 11th World Congress on Intelligent Control and Automation.

[36]  Gang Zheng,et al.  Analysis and Design on Key Updating Policies for Satellite Networks , 2008, Int. J. Comput. Commun. Control.

[37]  Heekuck Oh,et al.  Neural Networks for Pattern Recognition , 1993, Adv. Comput..

[38]  G. Clerc,et al.  Long-term prediction of bearing condition by the neo-fuzzy neuron , 2013, 2013 9th IEEE International Symposium on Diagnostics for Electric Machines, Power Electronics and Drives (SDEMPED).

[39]  Mohamed E. El-Hawary,et al.  Neo-Fuzzy Integrated Adaptive Decayed Brain Emotional Learning Network for Online Time Series Prediction , 2017, IEEE Access.

[40]  R. E. Abdel-Aal,et al.  GMDH-based feature ranking and selection for improved classification of medical data , 2005, J. Biomed. Informatics.

[41]  Takeshi Yamakawa,et al.  Soft Computing Based Signal Prediction, Restoration, and Filtering , 1997 .

[42]  Ingoo Han,et al.  The discovery of experts' decision rules from qualitative bankruptcy data using genetic algorithms , 2003, Expert Syst. Appl..

[43]  Manjaree Pandit,et al.  Modified neo-fuzzy neuron-based approach for economic and environmental optimal power dispatch , 2008, Appl. Soft Comput..

[44]  L. Nadel,et al.  Decay happens: the role of active forgetting in memory , 2013, Trends in Cognitive Sciences.

[45]  John Yearwood,et al.  A Hybrid Feature Selection With Ensemble Classification for Imbalanced Healthcare Data: A Case Study for Brain Tumor Diagnosis , 2016, IEEE Access.

[46]  P. Petta,et al.  Computational models of emotion , 2010 .

[47]  C. Lucas,et al.  Interior permanent magnet synchronous motor (IPMSM), with a developed brain emotional learning based intelligent controller (BELBIC) , 2009, 2009 IEEE International Electric Machines and Drives Conference.

[48]  Takeshi Yamakawa,et al.  System Modeling by a Neo-Fuzzy-Neuron with Applications to acoustic and Chaotic Systems , 1995, Int. J. Artif. Intell. Tools.

[49]  Joo-Hwee Lim,et al.  Fuzzy Associative Conjuncted Maps Network , 2009, IEEE Transactions on Neural Networks.

[50]  Ben Niu,et al.  Observer-based fuzzy tracking control for switched stochastic nonlinear systems , 2016, 2016 Chinese Control and Decision Conference (CCDC).

[51]  Caro Lucas,et al.  Sensorless speed control of switched reluctance motor using brain emotional learning based intelligent controller , 2011 .

[52]  Hiok Chai Quek,et al.  FCMAC-Yager: A Novel Yager-Inference-Scheme-Based Fuzzy CMAC , 2006, IEEE Transactions on Neural Networks.

[53]  Jason Jianjun Gu,et al.  Robust fault detection filter for non-linear state-delay networked control system , 2012, Int. J. Autom. Control..

[54]  Fuchun Sun,et al.  Visual–Tactile Fusion for Object Recognition , 2017, IEEE Transactions on Automation Science and Engineering.

[55]  Caro Lucas,et al.  Introducing Belbic: Brain Emotional Learning Based Intelligent Controller , 2004, Intell. Autom. Soft Comput..

[56]  Radford M. Neal Pattern Recognition and Machine Learning , 2007, Technometrics.

[57]  Ehsan Lotfi,et al.  Supervised brain emotional learning , 2012, The 2012 International Joint Conference on Neural Networks (IJCNN).

[58]  Huimin Lu,et al.  Facial Emotion Recognition Based on Biorthogonal Wavelet Entropy, Fuzzy Support Vector Machine, and Stratified Cross Validation , 2016, IEEE Access.

[59]  Joseph E. LeDoux,et al.  Emotion and the limbic system concept , 1991 .

[60]  Peter Xiaoping Liu,et al.  Observer-Based Fuzzy Adaptive Output-Feedback Control of Stochastic Nonlinear Multiple Time-Delay Systems , 2017, IEEE Transactions on Cybernetics.