Monday, November 3, 2014
IEEE Transactions on Neural Networks and Learning Systems: Volume 25, Issue 11, November 2014
Author(s): Nikoletta K. Bassiou; Constantine L. Kotropoulos
Page(s): 1953 - 1966
2. A Gaussian Process Model for Data Association and a Semidefinite Programming Solution
Author(s): Miguel Lazaro-Gredilla; Steven Van Vaerenbergh
Page(s): 1967 - 1979
3. Mahalanobis Distance on Extended Grassmann Manifolds for Variational Pattern Analysis
Author(s): Yoshikazu Washizawa; Seiji Hotta
Page(s): 1980 - 1990
4. Divisive Gaussian Processes for Nonstationary Regression
Author(s): Luis Munoz-Gonzalez; Miguel Lazaro-Gredilla; Anibal R. Figueiras-Vidal
Page(s): 1991 - 2003
5. Neural Network-Based Motion Control of an Underactuated Wheeled Inverted Pendulum Model
Author(s): Chenguang Yang; Zhijun Li; Rongxin Cui; Bugong Xu
Page(s): 2004 - 2016
6. Adaptive Neural Control of MIMO Nonlinear Systems With a Block-Triangular Pure-Feedback Control Structure
Author(s): Zhenfeng Chen; Shuzhi Sam Ge; Yun Zhang; Yanan Li
Page(s): 2017 - 2029
7. Single-Trial Classification of Event-Related Potentials in Rapid Serial Visual Presentation Tasks Using Supervised Spatial Filtering
Author(s): Hubert Cecotti; Miguel P. Eckstein; Barry Giesbrecht
Page(s): 2030 - 2042
8. Multiwavelet Packet Entropy and its Application in Transmission Line Fault Recognition and Classification
Author(s): Zhigang Liu; Zhiwei Han; Yang Zhang; Qiaoge Zhang
Page(s): 2043 - 2052
9. Confabulation-Inspired Association Rule Mining for Rare and Frequent Itemsets
Author(s): Azadeh Soltani; M.-R. Akbarzadeh-T.
Page(s): 2053 - 2064
10. Discriminant Locality Preserving Projections Based on L1-Norm Maximization
Author(s): Fujin Zhong; Jiashu Zhang; Defang Li
Page(s): 2065 - 2074
11. Ordinal Neural Networks Without Iterative Tuning
Author(s): Francisco Fernandez-Navarro; Annalisa Riccardi; Sante Carloni
Page(s): 2075 - 2085
12. Local Linear Regression for Function Learning: An Analysis Based on Sample Discrepancy
Author(s): Cristiano Cervellera; Danilo Maccio
Page(s): 2086 - 2098
13. Passivity and Passification of Memristor-Based Recurrent Neural Networks With Time-Varying Delays
Author(s): Zhenyuan Guo; Jun Wang; Zheng Yan
Page(s): 2099 - 2109
14. Synchronization on Complex Networks of Networks
Author(s): Renquan Lu; Wenwu Yu; Jinhu Lv; Anke Xue
Page(s): 2110 - 2118
15. Real-Time Keypoint Recognition Using Restricted Boltzmann Machine
Author(s): Miaolong Yuan; Huajin Tang; Haizhou Li
Page(s): 2119 - 2126
Tuesday, October 28, 2014
Conference paper deadline: ICAISC 2015
Monday, October 27, 2014
Neural Networks Volume 60, Pages: 1-246, December 2014
1. How active perception and attractor dynamics shape perceptual categorization: A computational model
Author(s): Nicola Catenacci Volpi, Jean Charles Quinton, Giovanni Pezzulo
Pages: 1-16
2. Connectionist interpretation of the association between cognitive dissonance and attention switching
Author(s): Takao Matsumoto
Pages: 119-132
3. Neurocomputational approaches to modelling multisensory integration in the brain: A review
Author(s): Mauro Ursino, Cristiano Cuppini, Elisa Magosso
Pages: 141-165
4. Person-by-person prediction of intuitive economic choice
Author(s): George Mengov
Pages: 232-245
Neuroscience
5. Global exponential almost periodicity of a delayed memristor-based neural networks
Author(s): Jiejie Chen, Zhigang Zeng, Ping Jiang
Pages: 33-43
6. Global robust asymptotic stability of variable-time impulsive BAM neural networks
Author(s): Mustafa Şaylı, Enes Yılmaz
Pages: 67-73
7. Noise cancellation of memristive neural networks
Author(s): Shiping Wen, Zhigang Zeng, Tingwen Huang, Xinghuo Yu
Pages: 74-83
8. Stability and bifurcation analysis of new coupled repressilators in genetic regulatory networks with delays
Author(s): Guang Ling, Zhi-Hong Guan, Ding-Xin He, Rui-Quan Liao, Xian-He Zhang
Pages: 222-231
Learning Systems
9. Simple randomized algorithms for online learning with kernels
Author(s): Wenwu He, James T. Kwok
Pages: 17-24
10. New approximation method for smooth error backpropagation in a quantron network
Author(s): Simon de Montigny
Pages: 84-95
11. Unsupervised learnable neuron model with nonlinear interaction on dendrites
Pages: 96-103
Author(s): Yuki Todo, Hiroki Tamura, Kazuya Yamashita, Zheng Tang
12. A convolutional recursive modified Self Organizing Map for handwritten digits recognition
Author(s): Ehsan Mohebi, Adil Bagirov
Pages: 104-118
13. Logarithmic learning for generalized classifier neural network
Author(s): Buse Melis Ozyildirim, Mutlu Avci
Pages: 133-140
14. Design of hybrid radial basis function neural networks (HRBFNNs) realized with the aid of hybridization of fuzzy clustering method (FCM) and polynomial neural networks (PNNs)
Author(s): Wei Huang, Sung-Kwun Oh, Witold Pedrycz
Pages: 166-181
15. On extending the complex FastICA algorithms to noisy data
Author(s): Zongli Ruan, Liping Li, Guobing Qian
Pages: 194-202
16. Online computing of non-stationary distributions velocity fields by an accuracy controlled growing neural gas
Author(s): Hervé Frezza-Buet
Pages: 203-221
Mathematical and Computational Analysis
17. Impulsive exponential synchronization of randomly coupled neural networks with Markovian jumping and mixed model-dependent time delays
Author(s): Xin Wang, Chuandong Li, Tingwen Huang, Ling Chen
Pages: 25-32
18. Continuous neural identifier for uncertain nonlinear systems with time delays in the input signal
Author(s): M. Alfaro-Ponce, A. Argüelles, I. Chairez
Pages: 53-66
Engineering and Applications
19. Dynamic neural network-based robust observers for uncertain nonlinear systems
Author(s): H.T. Dinh, R. Kamalapurkar, S. Bhasin, W.E. Dixon
Pages: 44-52
20. A computer vision system for rapid search inspired by surface-based attention mechanisms from human perception
Author(s): Johannes Mohr, Jong-Han Park, Klaus Obermayer
Pages: 182-193
Friday, October 17, 2014
Conference paper deadline: INNS Big Data 2015
Thursday, October 16, 2014
Conference paper deadline: Evostar 2015
Wednesday, October 15, 2014
Reminder: paper submission deadline: IJCNN 2015
Tuesday, October 14, 2014
IEEE Computational Intelligence Magazine Special Issue on "Computational Intelligence for Brain Computer Interfaces"
Aims and Scope
Brain Computer Interfaces (BCI) aims at establishing a one or two-way communication protocol between the human brain and an electronic device. The research umbrella of BCI has different names and overlaps with different research areas that evolved under the wider objective of connecting human data to an electronic device of some sort. Some of these areas include: adaptive automation, augmented cognition, brain-machine interface, human-machine symbiosis, and human-computer symbiosis.The last decade has witnessed a rise in the number of researchers working on BCI. With the advances of sensor technologies, efficient signal processing algorithms, and parallel computing, it was possible to finally realize the dream of many researchers who talked about the concept in one form or another in the sixties and seventies including J.C.R. Licklider, R.B. Rouse, and others. Different sensor and measurement technologies are evolving rapidly from the classical functional magnetic resonance imaging (fMRI), functional near infrared (fNIR), Electroencephalography (EEG), to complex integrated psycho-physiological sensor arrays.
Researchers in Computational Intelligence have been better situated than ever to extract knowledge from these signals, transform it to actionable decisions, and designing the intelligent machine that has long been promised and is now overdue. Success has been seen in many medical applications including assisting people on wheelchairs, stroke rehabilitation, and epileptic seizures. In the non-medical domain, BCI has been used for computer games, authentication in cyber security, and air traffic control.
This special issue aims at showcasing the most exciting and recent advances in BCI and related topics. The guest editors invite submissions of previously unpublished, recent and exciting research on BCI. The special issue welcomes survey, position, and research papers
Topics of Interest include:
- Adaptive control schemes for BCI
- Applications
- Augmented cognition and adaptive aiding using BCI
- Big data for brain mining
- Collaborative multi-humans BCI environments
- Computational intelligence applications for BCI
- Data and signal processing techniques for BCI applications
- Evolutionary algorithms for BCI
- Fusion of heterogeneous psycho-physiological sensors
- Fuzzy logic for BCI
- Neuroplasticity induced by brain-computer interactions
- Neural networks for BCI
- Novel sensor technologies for BCI
- Related computational intelligence methods for BCI
- Situation awareness systems for BCI applications
- Swarm techniques for BCI
- Other closely related topics on computational intelligence for BCI
Submission Process
The maximum length for the manuscript is typically 25 pages in single column format with double-spacing, including figures and references. Authors should specify on the first page of their manuscripts the corresponding author’s contact and up to 5 keywords. Submission should be made via https://www.easychair.org/conferences/?conf=ieeecimbci2016Important Dates (for February 2016 Issue)
15th May, 2015: Submission of Manuscripts15th July, 2015: Notification of Review Results
15th August, 2015: Submission of Revised Manuscripts
15th September, 2015: Submission of Final Manuscripts
February 2016: Special Issue Publication
Guest Editors
Hussein A. Abbass, The University of New South Wales, School of Engineering and Information Technology, Canberra, ACT 2600, Australia.Cuntai Guan, Institute for Infocomm Research (I2R), 1 Fusionopolis Way, Fusionopolis, 138632, Singapore.
Kay Chen Tan, National University of Singapore, Department of Electrical and Computer Engineering, 4 Engineering Drive, 117583, Singapore.
Monday, October 13, 2014
IEEE TNNLS Special Issue on "Learning in Neuromorphic Systems and Cyborg Intelligence"
Scope of the Special Issue
We invite original contributions related to learning in neuromorphic systems and cyborg intelligence, from theories, algorithms, modelling and experiment studies to applications. Topics include but are not limited to:- Cognitive computing and cyborg intelligence
- Neuromorphic information/signal processing
- Brain-inspired data representation models
- Neuromorphic learning and cognitive systems
- Co-learning in bio-machine systems
- Spike-based sensing and learning
- Neuromorphic sensors and hardware systems
- Intelligence for embedded systems
- Cognition mechanisms for big data
- Embodied cognition and neuro-robotics.
Important Dates
15 Nov 2014 – Deadline for manuscript submission15 Feb 2015 – Notification of authors
15 Apr 2015– Deadline for submission of revised manuscripts
15 May 2015 – Final decision
Guest Editors
Zhaohui Wu, Zhejiang University, China (wzh@zju.edu.cn)Ryad Benosman, University of Pierre and Marie Curie, France (ryad.benosman@upmc.fr)
Huajin Tang, Institute for Infocomm Research, Singapore and Sichuan University (huajin.tang@ieee.org)
Shih-Chii Liu, Institute of Neuroinformatics, University of Zurich and ETH Zurich (shih@ini.phys.ethz.ch)
Submission Instructions
- Read the information for Authors at http://cis.ieee.org/tnnls
- Submit the manuscript by 15th Nov 2014 at the TNNLS webpage (http://mc.manuscriptcentral.com/tnnls) and follow the submission procedure. Please, clearly indicate on the first page of the manuscript and in the cover letter that the manuscript has been submitted to the special issue on Learning in Neuromorphic Systems and Cyborg Intelligence. Send also an email to the guest editors with subject “TNNLS special issue submission” to notify about your submission.
Friday, October 10, 2014
CFP: Special Issue IEEE Computational Intelligence Magazine on "Computational Intelligence for Changing Environments"
Aims and Scope
Over the past decade or so, computational intelligence techniques have been highly successful for solving big data challenges in changing environments. In particular, there has been growing interest in so called biologically inspired learning (BIL), which refers to a wide range of learning techniques, motivated by biology, that try to mimic specific biological functions or behaviors. Examples include the hierarchy of the brain neocortex and neural circuits, which have resulted in biologically-inspired features for encoding, deep neural networks for classification, and spiking neural networks for general modelling.To ensure that these models are generalizable to unseen data, it is common to assume that the training and test data are independently sampled from an identical distribution, known as the sample i.i.d. assumption. In dynamic and non-stationary environments, the distribution of data changes over time, resulting in the phenomenon of ‘concept drift’ (also known as population drift or concept shift), which is a generalization of covariance shift in statistics. Over the last five years, transfer learning and multitask learning have been used to tackle this problem. Fundamental analyses using probably approximately correct (PAC) and Rademacher complexity frameworks have explained why appropriate incorporation of context and concept drift can improve generalizability in changing environments.
It is possible to use human-level processing power to tackle concept drift in changing enviroments. Concept drift is a real-world problem, usually associated with online and concept learning, where the relationships between input data and target variables dynamically change over time. Traditional learning schemes do not adequately address this issue, either because they are offline or because they avoid dynamic learning. However, BIL seems to possess properties that would be helpful for solving concept drift problems in changing environments. Intuitively, the human capacity to deal with concept drift is innate to cognitive processes, and the learning problems susceptible to concept drift seem to share some of the dynamic demands placed on plastic neural areas in the brain. Using improved biological models in neural networks can provide insight into cognitive computational phenomena.
However, a main outstanding issue in using computational intelligence for changing enviroments and domain adaptation is how to build complex networks, or how networks should be connected to the features, samples, and distribution drifts. Manual design and building of these networks are beyond current human capabilities. Recently, computational intelligence methods has been used to address concept drift in changing enviroments, with promising results. A Hebbian learning model has been used to handle random, as well as correlated, concept drift. Neural networks have been used for concept drift detection, and the influence of latent variables on concept drift in a neural network has been studied. In another study, a timing-dependent synapse model has been applied to concept drift. These works mainly apply biologically-plausible computational models to concept drift problems. Although these results are still in their infancy, they open up new possibilities to achieve brain-like intelligence for solving concept drift problems in changing environments.
Taking the current state of research in computational intelligence for changing environments into account, the objective of this special issue is to collate this research to help unify the concepts and terminology of computational intelligence in changing environments, and to survey state-of-the-art computational intelligence methodologies and the key techniques investigated to date. Therefore, this special issue invites submissions on the most recent developments in computational intelligence for changing enviroments algorithms and architectures, theoretical foundations, and representations, and their application to real-world problems. We also welcome timely surveys and review papers.
Topics of Interest include (but are not limited to):
- Computational intelligence methodologies and implementation for changing environments
- Transfer learning
- Multitask learning
- Domain adaption
- Incremental Learning architectures
- Incremental Unsupervised and semi-supervised learning architectures
- Incremental Incremental Representation learning and disentangling
- Incremental Knowledge augmentation
- Incremental Adaptive Neuro-fuzzy systems
- Incremental and single-pass data mining
- Incremental Neural Clustering
- Incremental Neural regression
- Incremental Adaptive decision systems
- Incremental Feature selection and reduction
- Incremental Constructive Learning
- Novelty detection in Incremental learning
Submission Process
The maximum length for the manuscript is typically 25 pages in single column format with double-spacing, including figures and references. Authors should specify in the first page of their manuscripts the corresponding author’s contact and up to 5 keywords. Submission should be made viahttps://www.easychair.org/conferences/?conf=ieeecimcdbil2015.
Important Dates (for August 2015 Issue)
15th November, 2014: Submission of Manuscripts15th January, 2015: Notification of Review Results
15th Faburary, 2015: Submission of Revised Manuscripts
15th March, 2015: Submission of Final Manuscripts
August 2015: Publication
Guest Editors
Professor Amir Hussain,University of Stirling,
Stirling FK9 4LA SCOTLAND, UK
Email: ahu@cs.stir.ac.uk
Professor Dacheng Tao,
University of Technology, Sydney
235 Jones Street, Ultimo, NSW 2007, Australia
Email: dacheng.tao@uts.edu.au
Professor Jonathan Wu
University of Windsor
401 Sunset Avenue, Windsor, ON, Canada
Email: jwu@uwindsor.ca
Professor Dongbin Zhao
Institute of Automation, Chinese Academy of Sciences,
No. 95, Zhongguancun East Road, Beijing 100190, China
E-mail: dongbin.zhao@gmail.com
Thursday, October 9, 2014
Call for special sessions for CEC 2015
Wednesday, October 8, 2014
Conference paper deadline: FUZZ-IEEE 2015
Tuesday, October 7, 2014
IEEE Transactions on Evolutionary Computation, Volume 18, Number 5, October 2014
SPECIAL ISSUE ON THEORETICAL FOUNDATIONS OF EVOLUTIONARY COMPUTATION
GUEST EDITORIAL
1. Editorial for the Special Issue on Theoretical Foundations of Evolutionary ComputationAuthor(s): F. Neumann, B. Doerr, P. K. Lehre, and P. C. Haddow
Pages: 625-627
SPECIAL ISSUE PAPERS
2. Transforming Evolutionary Search into Higher-Level Evolutionary Search by Capturing Problem StructureAuthor(s): R. Mills, T. Jansen, and R. A. Watson
Pages: 628-642
3. Convergence of Hypervolume-Based Archiving Algorithms
Author(s): K. Bringmann and T. Friedrich
Pages: 643-657
4. Asymptotic Properties of a Generalized Cross-Entropy Optimization Algorithm
Author(s): Z. Wu and M. Kolonko
Pages: 658-673
5. Reevaluating Immune-Inspired Hypermutations Using the Fixed Budget Perspective
Author(s): T. Jansen and C. Zarges
Pages: 674-688
REGULAR ISSUE PAPERS
6. Differential Evolution With Dynamic Parameters Selection for Optimization ProblemsAuthor(s): R. A. Sarker, S. M. Elsayed, and T. Ray
Pages: 689-707
7. Automated Map Generation for the Physical Traveling Salesman Problem
Author(s): D. Perez, J. Togelius, S. Samothrakis, P. Rohlfshagen, and S. M. Lucas
Pages: 708-720
8. Multilocal Search and Adaptive Niching Based Memetic Algorithm With a Consensus Criterion for Data Clustering
Author(s): W. Sheng, S. Chen, M. Fairhurst, G. Xiao, and J. Mao
Pages: 721-741
9. A Knowledge-Based Evolutionary Multiobjective Approach for Stochastic Extended Resource Investment Project Scheduling
Author(s): J. Xiong, J. Liu, Y. Chen, and H. A. Abbass
Pages: 742-765
10. The Dynamics of Self-Adaptive Multirecombinant Evolution Strategies on the General Ellipsoid Model
Author(s): H.-G. Beyer and A. Melkozerov
Pages: 764-778
11. Genetic Algorithms for Evolving Computer Chess Programs
Author(s): O. E. David, H. J. van den Herik, M. Koppel, and N. S. Netanyahu
Pages: 779-789
COMMENTARY
12. A Comment on “Correlation as a Heuristic for Accurate and Comprehensible Ant Colony Optimization-Based Classifiers”Author(s): B. Minnaert and D. Martens
Pages: 790
Monday, October 6, 2014
IEEE Transactions on Neural Networks and Learning Systems, Volume 25, Number 10, October 2014
REGULAR PAPERS
1. A New Learning Algorithm for a Fully Connected Neuro-Fuzzy Inference SystemAuthor(s): C. L. P. Chen, J. Wang, C.-H. Wang, and L. Chen
Pages: 1741-1757
2. Synchronization of Stochastic Dynamical Networks Under Impulsive Control With Time Delays
Author(s): W. Zhang, Y. Tang, Q. Miao, and J.-A. Fang
Pages: 1758-1768
3. Stochastic Learning via Optimizing the Variational Inequalities
Author(s): Q. Tao, Q.-K. Gao, D.-J. Chu, and G.-W. Wu
Pages: 1769-1778
4. Sparse Alignment for Robust Tensor Learning
Author(s): Z. Lai, W. K. Wong, Y. Xu, C. Zhao, and M. Sun
Pages: 1779-1792
5. An Incremental Design of Radial Basis Function Networks
Author(s): H. Yu, P. D. Reiner, T. Xie, T. Bartczak, and B. M. Wilamowski
Pages: 1793-1803
6. Pinning Distributed Synchronization of Stochastic Dynamical Networks: A Mixed Optimization Approach
Author(s): Y. Tang, H. Gao, J. Lu, and J. Kurths
Pages: 1804-1815
7. Deep Networks are Effective Encoders of Periodicity
Author(s): L. Szymanski and B. McCane
Pages: 1816-1827
8. Parsimonious Extreme Learning Machine Using Recursive Orthogonal Least Squares
Author(s): N. Wang, M. J. Er, and M. Han
Pages: 1828-1841
9. LI-MLC: A Label Inference Methodology for Addressing High Dimensionality in the Label Space for Multilabel Classification
Author(s): F. Charte, A. J. Rivera, M. J. del Jesus, and F. Herrera
Pages: 1842-1854
10. A Fast Algorithm for Nonnegative Matrix Factorization and Its Convergence
Author(s): L.-X. Li, L. Wu, H.-S. Zhang, and F.-X. Wu
Pages: 1855-1863
11. Memristor Crossbar-Based Neuromorphic Computing System: A Case Study
Author(s): M. Hu, H. Li, Y. Chen, Q. Wu, G. S. Rose, and R. W. Linderman
Pages: 1864-1878
12. Multiobjective Optimization for Model Selection in Kernel Methods in Regression
Author(s): D. You, C. F. Benitez-Quiroz, and A. M. Martinez
Pages: 1879-1893
13. Separation of Synchronous Sources Through Phase Locked Matrix Factorization
Author(s): M. S. B. Almeida, R. Vigário, and J. Bioucas-Dias
Pages: 1894-1908
14. Clipping in Neurocontrol by Adaptive Dynamic Programming
Author(s): M. Fairbank, D. Prokhorov, and E. Alonso
Pages: 1909-1920
BRIEF PAPERS
15. Consensus Acceleration in a Class of Predictive NetworksAuthor(s): H.-T. Zhang and Z. Chen
Pages: 1921-1927
16. H-infinity Output Tracking Control of Discrete-Time Nonlinear Systems via Standard Neural Network Models
Author(s): M. Liu, S. Zhang, H. Chen, and W. Sheng
Pages: 1928-1935
17. Extended Dissipative Analysis for Neural Networks With Time-Varying Delays
Author(s): T. H. Lee, M.-J. Park, J. H. Park, O.-M. Kwon, and S.-M. Lee
Pages: 1936-1941
18. Multilinear Sparse Principal Component Analysis
Author(s): Z. Lai, Y. Xu, Q. Chen, J. Yang, and D. Zhang
Pages: 1942
Saturday, October 4, 2014
IEEE Transactions on Fuzzy Systems: Issue 5, Volume 22, October 2014
REGULAR PAPERS
1. Partial Tracking Error Constrained Fuzzy Dynamic Surface Control for a Strict Feedback Nonlinear Dynamic SystemAuthor(s): S.I. Han and J.M. Lee
Pages: 1049-1061
2. Non-L-R Type Fuzzy Parameters in Mathematical Programming Problems
Author(s): C.-F. Hu, M. Adivar, and S.-C. Fang
Pages: 1062-1073
3. A Novel Evolutionary Kernel Intuitionistic Fuzzy C-means Clustering Algorithm
Author(s): K.-P. Lin
Pages: 1074-1087
4. A Dynamic Decoupling Approach to Robust T–S Fuzzy Model-Based Control
Author(s): C.-S. Chiu
1088-1100
5. Relaxed Stability and Stabilization Conditions of Networked Fuzzy Control Systems Subject to Asynchronous Grades of Membership
Author(s): C. Peng, D. Yue, and M.-R. Fei
Pages: 1101-1112
6. Fuzzy n-Ellipsoid Numbers and Representations of Uncertain Multichannel Digital Information
Author(s): G. Wang, P. Shi, B.Wang, and J. Zhang
Pages: 1113-1126
7. Prioritized Measure-Guided Aggregation Operators
Author(s): L. Chen, Z. Xu, and X. Yu
Pages: 1127-1138
8. A Fuzzy Measure Approach to Systems Reliability Modeling
Author(s): R. R. Yager
Pages: 1139-1150
9. Fuzzy Concept Hierarchies and Evidence Resolution
Author(s): F. E. Petry and R. R. Yager
Pages: 1151-1161
10. General Type-2 Fuzzy Logic Systems Made Simple: A Tutorial
Author(s): J. M. Mendel
Pages: 1162-1182
11. Nonfragile Control With Guaranteed Cost of T–S Fuzzy Singular Systems Based on Parallel Distributed Compensation
Author(s): C. Han, L. Wu, H.K. Lam, and Q. Zeng
Pages: 1183-1196
12. On the Monotonicity of Interval Type-2 Fuzzy Logic Systems
Author(s): C. Li, J. Yi, and G. Zhang
Pages: 1197-1212
13. Robust Model Predictive Control for Discrete-Time Takagi–Sugeno Fuzzy Systems With Structured Uncertainties and Persistent Disturbances
Author(s): W. Yang, G. Feng, and T. Zhang
Pages: 1213-1228
14. Accelerating Fuzzy-C Means Using an Estimated Subsample Size
Author(s): J. K. Parker and L. O. Hall
Pages: 1229-1244
15. On Advanced Computing With Words Using the Generalized Extension Principle for Type-1 Fuzzy Sets
Author(s): M.R. Rajati and J.M. Mendel
Pages: 1245-1261
16. Adaptive Sliding-Mode Antisway Control of Uncertain Overhead Cranes With High-Speed Hoisting Motion
Author(s): M.-S. Park, D. Chwa, and M. Eom
Pages: 1262-1271
17. The Neuro-Fuzzy Computing System With the Capacity of Implementation on a Memristor Crossbar and Optimization-Free Hardware Training
Author(s): F. Merrikh-Bayat, F. Merrikh-Bayat, and S. B. Shouraki
Pages: 1272-1287
18. Adaptive Fuzzy Control for MIMO Nonlinear Systems With Nonsymmetric Control Gain Matrix and Unknown Control Direction
Author(s): W. Shi
Pages: 1288-1300
19. Two-mode Indirect Adaptive Control Approach for the Synchronization of Uncertain Chaotic Systems by the Use of a Hierarchical Interval Type-2 Fuzzy Neural Network
Author(s): A. Mohammadzadeh, O. Kaynak, and M. Teshnehlab
Pages: 1301-1312
20. Fuzzy Control Design for Nonlinear ODE-Hyperbolic PDE-Cascaded Systems: A Fuzzy and Entropy-Like Lyapunov Function Approach
Author(s): J.-W. Wang, H.-N. Wu, and H.-X. Li
Pages: 1313-1324
21. Attribute Reduction for Heterogeneous Data Based on the Combination of Classical and Fuzzy Rough Set Models
Author(s): D. Chen and Y. Yang
Pages: 1325-1334
SHORT PAPERS
22. On Computing Normalized Interval Type-2 Fuzzy SetsAuthor(s): J. M. Mendel and M. R. Rajati
Pages: 1335-1340
23. Adaptive Fuzzy Output-Feedback Control of Pure-Feedback Uncertain Nonlinear Systems With Unknown Dead Zone
Author(s): Y. Li and S. Tong
Pages: 1341-1346
24. A Heuristic Method to Compute the Approximate Postinverses of a Fuzzy Matrix
Author(s): P. Li
Pages: 1347-1351
25. Removal of High-Density Salt-and-Pepper Noise in Images With an Iterative Adaptive Fuzzy Filter Using Alpha-Trimmed Mean
Author(s): F. Ahmed and S. Das
Pages: 1352-1358
26. Adaptive Fuzzy Control for a Class of Nonlinear Discrete-Time Systems With Backlash
Author(s): Y.-J. Liu and S. Tong
Pages: 1359-1364
27. Adaptive Fuzzy Decentralized Output Stabilization for Stochastic Nonlinear Large-Scale Systems With Unknown Control Directions
Author(s): S. Tong, S. Sui, and Y. Li
Pages: 1365
Thursday, October 2, 2014
Reminder: conference paper deadline for IEEE CIG 2015
Friday, September 19, 2014
Reminder: paper submission deadline for CEC 2015
Tuesday, September 16, 2014
Neural Networks Special Issue: Neural Network Learning in Big Data
For this special issue of Neural Networks, we invite papers that address many of the challenges of learning from big data. In particular, we are interested in papers on efficient and innovative algorithmic approaches to analyzing big data (e.g. deep networks, nature-inspired and brain-inspired algorithms), implementations on different computing platforms (e.g. neuromorphic, GPUs, clouds, clusters) and applications of online learning to solve real-world big data problems (e.g. health care, transportation, and electric power and energy management).
RECOMMENDED TOPICS:
Topics of interest include, but are not limited to:- Autonomous, online, incremental learning – theory, algorithms and applications in big data
- High dimensional data, feature selection, feature transformation – theory, algorithms and applications for big data
- Scalable neural network algorithms for big data
- Neural network learning algorithms for high-velocity streaming data
- Deep neural network learning
- Neuromorphic hardware for scalable neural network learning
- Big data analytics using neural networks in healthcare/medical applications
- Big data analytics using neural networks in electric power and energy systems
- Big data analytics using neural networks in large sensor networks
- Big data and neural network learning in computational biology and bioinformatics
SUBMISSION PROCEDURE:
Prospective authors should visit http://ees.elsevier.com/neunet/ for information on paper submission. During the submission process, there will be steps to designate the submission to this special issue. However, please indicate on the first page of the manuscript that the manuscript is intended for the Special Issue: Neural Network Learning in Big Data. Manuscripts will be peer reviewed according to Neural Networks guidelines.Manuscript submission due: December 15, 2014
First review completed: March 1, 2015
Revised manuscript due: April 1, 2015
Second review completed, final decisions to authors: April 15, 2015
Final manuscript due: April 30, 2015
GUEST EDITORS:
- Asim Roy, Arizona State University, USA (asim.roy@asu.edu) (lead guest editor)
- Kumar Venayagamoorthy, Clemson University, USA (gkumar@ieee.org)
- Nikola Kasabov, Auckland University of Technology, New Zealand (nkasabov@aut.ac.nz)
- Irwin King, Chinese University of Hong Kong, China (irwinking@gmail.com)
Monday, September 15, 2014
IEEE Transactions on Computational Intelligence and Artificial Intelligence in Games, Volume 6, Issue 3, September 2014
Author(s): T. Pepels, M. H. M. Winands, and M. Lanctot
Pages: 245-257
2. An Automatically Generated Evaluation Function in General Game Playing
Author(s): K. Walędzik and J. Mańdziuk
Pages: 258-270
3. A Computational Model of Plan-Based Narrative Conflict at the Fabula Level
Author(s): S. G. Ware, R. M. Young, B. Harrison, and D. L. Roberts
Pages: 271-288
4. Good Machine Performance in Turing’s Imitation Game
Author(s): K. Warwick and H. Shah
Pages: 289-300
5. Preference Learning for Move Prediction and Evaluation Function Approximation in Othello
Author(s): T. P. Runarsson and S. M. Lucas
Pages: 300-313
Thursday, August 28, 2014
Evolving Systems Volume 5, Issue 3, September 2014
Review
1. Online and interactive self-adaptive learning of user profile using incremental evolutionary algorithmsAuthor(s): Abdelhamid Bouchachia , Arthur Lena & Charlie Vanaret
Pages: 143-157
Original Papers
2. OWA filters and forecasting models applied to electric power load time seriesAuthor(s): R. Ballini & R. R. Yager
Pages: 159-173
3. Visualization of evolving fuzzy rule-based systems
Author(s): Sascha Henzgen , Marc Strickert & Eyke Hüllermeier
Pages: 175-191
4. Interval type-2 fuzzy logic controller design for TCSC
Author(s): Manoj Kumar Panda , G. N. Pillai & Vijay Kumar
Pages: 193-208
5. Classification of mammography images based on cellular automata and Haralick parameters
Author(s): Sarah Benmazou , Hayet Farida Merouani , Soumia Layachi & Beledjhem Nedjmeddine
Pages: 209-216
Wednesday, August 27, 2014
IEEE Transactions on Neural Networks and Learning Systems: Volume 25, Number 9, September 2014
SPECIAL ISSUE ON COMPLEX- AND HYPERCOMPLEX-VALUED NEURAL NETWORKS
1. Guest Editorial: Special Issue on Complex- and Hypercomplex-Valued Neural NetworksAuthor(s): A. Hirose, I. Aizenberg, and D. P. Mandic
Page(s): 1597-1599
SPECIAL ISSUE PAPERS
2. Complex-Valued Recurrent Correlation Neural NetworksAuthor(s): M. E. Valle
Page(s): 1600-1612
3. The Field of Values of a Matrix and Neural Networks
Author(s): G. M. Georgiou
Page(s): 1613-1620
4. Different Complex ZFs Leading to Different Complex ZNN Models for Time-Varying Complex Generalized Inverse Matrices
Author(s): B. Liao and Y. Zhang
Page(s): 1621-1631
5. MLMVN With Soft Margins Learning
Author(s): I. Aizenberg
Page(s): 1632-1644
6. Modified Multivalued Neuron With Periodic Tolerant Activation Function
Author(s): J.-P. Chen and S.-J. Lee
Page(s): 1645-1658
7. A Metacognitive Complex-Valued Interval Type-2 Fuzzy Inference System
Author(s): K. Subramanian, R. Savitha, and S. Suresh
Page(s): 1659-1672
8. Complex-Valued B-Spline Neural Networks for Modeling and Inverting Hammerstein Systems
Author(s): S. Chen, X. Hong, J. Gao, and C. J. Harris
Page(s): 1673-1685
9. Fading Channel Prediction Based on Combination of Complex-Valued Neural Networks and Chirp Z-Transform
Author(s): T. Ding and A. Hirose
Page(s): 1686-1695
10. On the Correction of Anomalous Phase Oscillation in Entanglement Witnesses Using Quantum Neural Networks
Author(s): E. C. Behrman, R. E. F. Bonde, J. E. Steck, and J. F. Behrman
Page(s): 1696-1703
SPECIAL ISSUE BRIEF PAPERS
11. Global Stability Criterion for Delayed Complex-Valued Recurrent Neural NetworksAuthor(s): Z. Zhang, C. Lin, and B. Chen
Page(s): 1704-1708
12. Further Investigate the Stability of Complex-Valued Recurrent Neural Networks With Time-Delays
Author(s): T. Fang and J. Sun
Page(s): 1709-1713
13. Threshold Complex-Valued Neural Associative Memory
Author(s): P. Zheng
Page(s): 1714-1718
14. Principal Component Analysis With Complex Kernel: The Widely Linear Model
Author(s): A. Papaioannou and S. Zafeiriou
Page(s): 1719-1726
15. Ultrawideband Direction-of-Arrival Estimation Using Complex-Valued Spatiotemporal Neural Networks
Author(s): K. Terabayashi, R. Natsuaki, and A. Hirose
Page(s): 1727-1732
16. Adaptive Dynamic Programming for a Class of Complex-Valued Nonlinear Systems
Author(s): R. Song, W. Xiao, H. Zhang, and C. Sun
Page(s): 1733
Tuesday, August 26, 2014
Conference abstract deadline: NCEI 2015
Monday, August 18, 2014
Neural Networks Volume 58, Pages 1-148, October 2014
Edited by Amir Hussain, Erik Cambria, Björn Schuller and Newton Howard
1. Affective neural networks and cognitive learning systems for big data analysis
Pages: 1-3
Author(s): Amir Hussain, Erik Cambria, Björn Schuller, Newton Howard
2. Discrete particle swarm optimization for identifying community structures in signed social networks
Pages: 4-13
Author(s): Qing Cai, Maoguo Gong, Bo Shen, Lijia Ma, Licheng Jiao
3. An incremental community detection method for social tagging systems using locality-sensitive hashing
Pages: 14-28
Author(s): Zhenyu Wu, Ming Zou
4. Affective topic model for social emotion detection
Pages: 29-37
Author(s): Yanghui Rao, Qing Li, Liu Wenyin, Qingyuan Wu, Xiaojun Quan
5. Modeling virtual organizations with Latent Dirichlet Allocation: A case for natural language processing
Pages: 38-49
Author(s): Alexander Gross, Dhiraj Murthy
6. Semi-supervised word polarity identification in resource-lean languages
Pages: 50-59
Author(s): Iman Dehdarbehbahani, Azadeh Shakery, Heshaam Faili
7. Incorporating conditional random fields and active learning to improve sentiment identification
Pages: 60-67
Author(s): Kunpeng Zhang, Yusheng Xie, Yi Yang, Aaron Sun, Hengchang Liu, Alok Choudhary
8. A classification of user-generated content into consumer decision journey stages
Pages: 68-81
Author(s): Silvia Vázquez, Óscar Muñoz-García, Inés Campanella, Marc Poch, Beatriz Fisas, Nuria Bel, Gloria Andreu
9. Sentiments analysis at conceptual level making use of the Narrative Knowledge Representation Language
Pages: 82-97
Author(s): Gian Piero Zarri
10. Exploring personalized searches using tag-based user profiles and resource profiles in folksonomy
Pages: 98-110
Author(s): Yi Cai, Qing Li, Haoran Xie, Huaqin Min
11. Community-aware user profile enrichment in folksonomy
Pages: 111-121
Author(s): Haoran Xie, Qing Li, Xudong Mao, Xiaodong Li, Yi Cai, Yanghui Rao
12. A multi-label, semi-supervised classification approach applied to personality prediction in social media
Pages: 122-130
Author(s): Ana Carolina E.S. Lima, Leandro Nunes de Castro
13. Semantically-based priors and nuanced knowledge core for Big Data, Social AI, and language understanding
Pages: 131-147
Author(s): Daniel Olsher
Monday, August 4, 2014
IEEE Transactions on Evolutionary Computation, Volume 18, Number 4, August 2014
Author(s): M. Iqbal, W. N. Browne, and M. Zhang
Pages: 465-480
2. Quick Hypervolume
Author(s): L. M. S. Russo and A. P. Francisco
Pages: 481-502
3. Ant Colony Optimization for Mixed-Variable Optimization Problems
Author(s): T. Liao, K. Socha, M. A. Montes de Oca, T. Stutzle, and M. Dorigo
Pages: 503-518
4. Multiobjective Estimation of Distribution Algorithm Based on Joint Modeling of Objectives and Variables
Author(s): H. Karshenas, R. Santana, C. Bielza, and P. Larranaga
Pages: 519-542
5. Evolving an Improved Algorithm for Envelope Reduction Using a Hyper-Heuristic Approach
Author(s): B. Koohestani and R. Poli
Pages: 543-558
6. Evolving Classifiers to Recognize the Movement Characteristics of Parkinson’s Disease Patients
Author(s): M. A. Lones, S. L. Smith, J. E. Alty, S. E. Lacy, K. L. Possin, D. R. S. Jamieson, and A. M. Tyrrell
Pages: 559-576
7. An Evolutionary Many-Objective Optimization Algorithm Using Reference-Point-Based Nondominated Sorting Approach, Part I: Solving Problems With Box Constraints
Author(s): K. Deb and H. Jain
Pages: 577-601
8. An Evolutionary Many-Objective Optimization Algorithm Using Reference-Point-Based Nondominated Sorting Approach, Part II: Handling Constraints and Extending to an Adaptive Approach
Author(s): H. Jain and K. Deb
Pages: 602
Friday, August 1, 2014
IEEE Transactions on Fuzzy Systems, Volume 22, Number 4, August 2014
REGULAR PAPERS
1. Design of Fuzzy-Neural-Network-Inherited Backstepping Control for Robot Manipulator Including Actuator DynamicsAuthor(s): R.-J.Wai and R.Muthusamy
Pages: 709-722
2. Rule-Based Cooperative Continuous Ant Colony Optimization to Improve the Accuracy of Fuzzy System Design
Author(s): C.-F.Juang, C.-W. Hung, and C.-H. Hsu
Pages: 723-735
3. A Model-Based Fault Detection and Prognostics Scheme for Takagi–Sugeno Fuzzy Systems
Author(s): B.T. Thumati, M. A. Feinstein, and S. Jagannathan
Pages: 736-748
4. Intuitionistic Fuzzy Analytic Hierarchy Process
Author(s):Z. Xu and H. Liao
Pages: 749-761
5. A Semisupervised Multiagent System Model to Support Consensus-Reaching Processes
Author(s): I. Palomares and L. Martinez
Pages: 762-777
6. Context-Dependent Fuzzy Systems With Application to Time-Series Prediction
Author(s): D. T. Ho and J. M. Garibaldi
Pages: 778-790
7. Intelligent Control Using the Wavelet Fuzzy CMAC Backstepping Control System for Two-Axis Linear Piezoelectric Ceramic Motor Drive Systems
Author(s): C.-M. Lin and H.-Y. Li
Pages: 791-802
8. Moment Adaptive Fuzzy Control and Residue Compensation
Author(s): T. Tao and S.-F. Su
Pages: 803-816
9. The Exponential Stability and Asynchronous Stabilization of a Class of Switched Nonlinear System Via the T–S Fuzzy Model
Author(s): Y. Mao, H. Zhang, and S. Xu
Pages: 817-828
10. Cooperative Coevolution for Large-Scale Optimization Based on Kernel Fuzzy Clustering and Variable Trust Region Methods
Author(s): J. Fan, J. Wang, and M. Han
Pages: 829-839
11. The Reduction of Interval Type-2 LR Fuzzy Sets
Author(s): C.-L. Chen, S.-C. Chen, and Y.-H. Kuo
Pages: 840-858
12. From Fuzzy Cognitive Maps to Granular Cognitive Maps
Author(s): W. Pedrycz and W. Homenda
Pages: 859-869
13. Robust H8 Control for Stochastic T–S Fuzzy Systems via Integral Sliding-Mode Approach
Author(s): Q. Gao, G. Feng, L. Liu, J. Qiu, and Y. Wang
870-881
14. Multicriteria Decision-Making With Imprecise Importance Weights
Author(s): R. R. Yager and N. Alajlan
Pages: 882-891
15. Simulation of Fuzzy Queueing Systems With a Variable Number of Servers, Arrival Rate, and Service Rate
Author(s): E.Munoz and E. H. Ruspini
Pages: 892-903
16. Membership Function Design for Multifactorial Multivariate Data Characterizing and Coding in Human Component System Studies
Author(s): P. Loslever
Pages: 904-918
17. OptiFel: A Convergent Heterogeneous Particle Swarm Optimization Algorithm for Takagi–Sugeno Fuzzy Modeling
Author(s): N.J. Cheung, X.-M. Ding, and H.-B. Shen
Pages: 919-933
18. The Generalized TP Model Transformation for T–S Fuzzy Model Manipulation and Generalized Stability Verification
Author(s): P. Baranyi
Pages: 934-948
19. Hypermatching: Similarity Matching With Extreme Values
Author(s): R. R. Yager and F. E. Petry
Pages: 949-957
20. Pythagorean Membership Grades in Multicriteria Decision Making
Author(s): R. R. Yager
Pages: 958-965
21. Dual Bipolar Measures of Atanassov’s Intuitionistic Fuzzy Sets
Author(s): L.-H. Chen, and C.-C. Tu
Pages: 966-982
22. Generalized Markov Models for Real-Time Modeling of Continuous Systems
Author(s): D. P. Filev and I. Kolmanovsky
Pages: 983-998
23. GT2FC: An Online Growing Interval Type-2 Self-Learning Fuzzy Classifier
Author(s): A. Bouchachia and C. Vanaret
Pages: 999-1018
SHORT PAPERS
24. Fuzzy-Model-Based D-Stability and Nonfragile Control for Discrete-Time Descriptor Systems With Multiple DelaysAuthor(s): F. Li, P. Shi, L. Wu, and X. Zhang
Pages: 1019-1025
25. Further Studies on Control Synthesis of Discrete-Time T–S Fuzzy Systems via Useful Matrix Equalities
Author(s): X. Xie, D. Yue, and X. Zhu
Pages: 1026-1030
26. Stability Analysis of Positive Interval Type-2 TSK Systems With Application to Energy Markets
Author(s): M.S. Fadali and S. Jafarzadeh
Pages: 1031-1038
27. Orness Measure of OWA Operators: A New Approach
Author(s): A. Kishor, A. K. Singh, and N. R. Pal
Pages: 1039-1044
28. A Characterization of the Orthogonal Grid Constructions of Copulas
Author(s): J. F. Sanchez and M. Ubeda-Flores
Pages: 1045
Monday, July 28, 2014
Neural Networks Volume 57, Pages 1-166, September 2014
Neuroscience
1. Bayesian common spatial patterns for multi-subject EEG classificationAuthor(s): Hyohyeong Kang, Seungjin Choi
Pages: 39-50
2. Estimating the correlation between bursty spike trains and local field potentials
Author(s): Zhaohui Li, Gaoxiang Ouyang, Li Yao, Xiaoli Li
Pages: 63-72
3. Effect of hybrid circle reservoir injected with wavelet-neurons on performance of echo state network
Author(s): Hongyan Cui, Chen Feng, Yuan Chai, Ren Ping Liu, Yunjie Liu
Pages: 141-151
Learning Systems
4. Noise model based image -support vector regression with its application to short-term wind speed forecastingAuthor(s): Qinghua Hu, Shiguang Zhang, Zongxia Xie, Jusheng Mi, Jie Wan
Pages: 1-11
5. Using financial risk measures for analyzing generalization performance of machine learning models
Author(s): Akiko Takeda, Takafumi Kanamori
Pages: 29-38
6. Fast Gaussian kernel learning for classification tasks based on specially structured global optimization
Author(s): Shangping Zhong, Tianshun Chen, Fengying He, Yuzhen Niu
Pages: 51-62
7. Semi-supervised information-maximization clustering
Author(s): Daniele Calandriello, Gang Niu, Masashi Sugiyama
Pages: 103-111
8. Model-based policy gradients with parameter-based exploration by least-squares conditional density estimation
Author(s): Voot Tangkaratt, Syogo Mori, Tingting Zhao, Jun Morimoto, Masashi Sugiyama
Pages: 128-140
Mathematical and Computational Analysis
9. Periodicity and dissipativity for memristor-based mixed time-varying delayed neural networks via differential inclusionsAuthor(s): Lian Duan, Lihong Huang
Pages: 12-22
10. Comparing fixed and variable-width Gaussian networks
Author(s): Věra Kůrková, Paul C. Kainen
Pages: 23-28
11. Synchronization of memristor-based recurrent neural networks with two delay components based on second-order reciprocally convex approach
Author(s): A. Chandrasekar, R. Rakkiyappan, Jinde Cao, S. Lakshmanan
Pages: 79-93
12. Sudoku associative memory
Author(s): Jiann-Ming Wu, Pei-Hsun Hsu, Cheng-Yuan Liou
Pages: 112-127
Engineering and Applications
13. Neural network for solving Nash equilibrium problem in application of multiuser power controlAuthor(s): Xing He, Junzhi Yu, Tingwen Huang, Chuandong Li, Chaojie Li
Pages: 73-78
14. A new switching design to finite-time stabilization of nonlinear systems with applications to neural networks
Author(s): Xiaoyang Liu, Daniel W.C. Ho, Wenwu Yu, Jinde Cao
Pages: 94-102
15. Image denoising using nonsubsampled shearlet transform and twin support vector machines
Author(s): Hong-Ying Yang, Xiang-Yang Wang, Pan-Pan Niu, Yang-Cheng Liu
Pages: 152-165
Friday, July 25, 2014
IEEE Transactions on Neural Networks and Learning Systems: Volume 25, Issue 8, August 2014
Authors: Aroor Dinesh Dileep; Chellu Chandra Sekhar
Page(s): 1421 - 1432
2. Extensions of Kmeans-Type Algorithms: A New Clustering Framework by Integrating Intracluster Compactness and Intercluster Separation
Authors: Xiaohui Huang; Yunming Ye; Haijun Zhang
Page(s): 1433 - 1446
3. Efficient Kernel Sparse Coding Via First-Order Smooth Optimization
Authors: Minyoung Kim
Page(s): 1447 - 1459
4. Contact-Force Distribution Optimization and Control for Quadruped Robots Using Both Gradient and Adaptive Neural Networks
Authors: Zhijun Li; Shuzhi Sam Ge; Sibang Liu
Page(s): 1460 - 1473
5. On the Capabilities and Computational Costs of Neuron Models
Authors: Michael J. Skocik; Lyle N. Long
Page(s): 1474 - 1483
6. Global Sensitivity Analysis Approach for Input Selection and System Identification Purposes—A New Framework for Feedforward Neural Networks
Authors: Eric Fock
Page(s): 1484 - 1495
7. Cooperative Tracking Control of Nonlinear Multiagent Systems Using Self-Structuring Neural Networks
Authors: Gang Chen; Yong-Duan Song
Page(s): 1496 - 1507
8. Distributed Neural Network Control for Adaptive Synchronization of Uncertain Dynamical Multiagent Systems
Authors: Zhouhua Peng; Dan Wang; Hongwei Zhang; Gang Sun
Page(s): 1508 - 1519
9. Instance-Level Constraint-Based Semisupervised Learning With Imposed Space-Partitioning
Authors: Jayaram Raghuram; David J. Miller; George Kesidis
Page(s): 1520 - 1537
10. Modified Principal Component Analysis: An Integration of Multiple Similarity Subspace Models
Authors: Zizhu Fan; Yong Xu; Wangmeng Zuo; Jian Yang; Jinhui Tang; Zhihui Lai; David Zhang
Page(s): 1538 - 1552
11. On the Complexity of Neural Network Classifiers: A Comparison Between Shallow and Deep Architectures
Authors: Monica Bianchini; Franco Scarselli
Page(s): 1553 - 1565
12. A Minimum Resource Neural Network Framework for Solving Multiconstraint Shortest Path Problems
Authors: Junying Zhang; Xiaoxue Zhao; Xiaotao He
Page(s): 1566 - 1582
13. Simulating Dynamic Plastic Continuous Neural Networks by Finite Elements
Authors: Abdolreza Joghataie; Omid Oliyan Torghabehi
Page(s): 1583 - 1587
14. Minimizing Nearest Neighbor Classification Error for Nonparametric Dimension Reduction
Authors: Wei Bian; Tianyi Zhou; Aleix M. Martinez; George Baciu; Dacheng Tao
Page(s): 1588 - 1594
15. Correction to “Convergence and Rate Analysis of Neural Networks for Sparse Approximation”
Authors: Aurele Balavoine; Justin Romberg; Christopher J. Rozell
Page(s): 1595 - 1596
Tuesday, July 22, 2014
IEEE TNNLS Special issue on “Neurodynamic Systems for Optimization and Applications”
The objective of this special issue is to bring together recent advances in the field of neurodynamic systems for solving optimization problems. We invite original and unpublished research contributions in all relevant areas. We will encourage submissions of papers with new models and applications which would further promote research activities in this area.
Topics of interest include, but are not limited to:
- Neurodynamic models for constrained optimization
- Neurodynamic models for multi-objective optimization
- Neurodynamic models for large-scale optimization problems
- Neurodynamic models for deep learning
- Neurodynamic models for optimal control
- Neurodynamic models for tensor decomposition
- Analysis of neurodynamic optimization systems
- Neurodynamic optimization in the brain
- Neurodynamic optimization for process control
- Neurodynamic optimization for robot control
- Neurodynamic optimization for biomedical engineering problems
- Neurodynamic optimization for signal processing
- Neurodynamic optimization for image processing
- Neurodynamic optimization for support vector machine learning
- Neurodynamic optimization for pattern recognition
- Neurodynamic optimization for other applications
IMPORTANT DATES
Aug. 15, 2014 – Deadline for manuscript submissionDec. 31, 2014 – Notification to authors
Feb. 15, 2015 – Deadline for submission of revised manuscripts
Mar.1, 2015 – Final decision
May/June 2015 – Special issue publication in the IEEE TNNLS.
SUBMISSION INSTRUCTIONS
- Read the information for authors at http://cis.ieee.org/tnnls
- Submit the manuscript by August 15, 2014 at the IEEE-TNNLS webpage http://mc.manuscriptcentral.com/tnnls and follow the submission procedure. Please indicate clearly on the first page of the manuscript and the Author’s Cover Letter that the manuscript has been submitted to the Special Issue on Neurodynamic Systems for Optimization and Applications. Send also an e-mail to chenglong@compsys.ia.ac.cn with subject “TNNLS special issue submission” to notify the editors of your submission.
GUEST EDITORS
Zhigang ZengHuazhong University of Science and Technology, China
zgzeng@hust.edu.cn
http://auto.hust.edu.cn/zhigangzeng/
Andrzej Cichocki
Brain Science Institute, RIKEN, Japan
cia@braiin.riken.jp
http://www.bsp.brain.riken.jp/~cia/
Long Cheng
Institute of Automation, Chinese Academy of Sciences, China
long.cheng@ia.ac.cn
http://compsys.ia.ac.cn/~chenglong
Yousheng Xia
Fuzhou University, China
ysxia@fzu.edu.cn
http://cmcs.fzu.edu.cn/action-model-name-teacher-itemid-34
Xiaolin Hu
Tsinghua University, China
xlhu@tsinghua.edu.cn
www.xlhu.cn
Sunday, June 22, 2014
Neural Networks Volume 56, Pages 1-68, August 2014
1. A global coupling index of multivariate neural series with application to the evaluation of mild cognitive impairment
Pages: 1-9
Author(s): Dong Wen, Qing Xue, Chengbiao Lu, Xinyong Guan, Yuping Wang, Xiaoli Li
2. Relative entropy minimizing noisy non-linear neural network to approximate stochastic processes
Pages: 10-21
Author(s): Mathieu N. Galtier, Camille Marini, Gilles Wainrib, Herbert Jaeger
3. Ideal regularization for learning kernels from labels
Pages: 22-34
Author(s): Binbin Pan, Jianhuang Lai, Lixin Shen
4. Grid topologies for the self-organizing map
Pages: 35-48
Author(s): Ezequiel López-Rubio, Antonio Díaz Ramos
5. Synaptic dynamics: Linear model and adaptation algorithm
Pages: 49-68
Author(s): Ali Yousefi, Alireza A. Dibazar, Theodore W. Berger
Evolving Systems, Volume 5, Issue2
1. Editorial: Special issue: applications, results & future direction (EAIS 12): 2
Author(s): Iglesias Martínez & Igor Škrjanc
2. Enhanced evolving participatory learning fuzzy modeling: an application for asset returns volatility forecasting
Author(s): Leandro Maciel , Fernando Gomide & Rosangela Ballini
3. Adaptive maximum-lifetime routing in mobile ad-hoc networks using temporal difference reinforcement learning
Author(s): Saloua Chettibi & Salim Chikhi
4. A self-organized system improving inner topology for data sharing efficiency
Author(s): Frédéric Armetta , Mohammed Haddad , Salima Hassas & Hamamache Kheddouci
5. Integrated job shop scheduling and layout planning: a hybrid evolutionary method for optimizing multiple objectives
Author(s): Kazi Shah Nawaz Ripon & Jim Torresen
6. Integrated temporal partitioning and partial reconfiguration techniques for design latency improvement
Author(s): Ramzi Ayadi , Bouraoui Ouni & Abdellatif Mtibaa
Friday, June 13, 2014
Reminder: paper submission deadline for SEAL 2014
A note on my posting
Some people may have noticed that my posts are appearing at odd times, or have slightly different formatting. The reason for this is that I am currently in China, where I am spending some time teaching at Huanggang Normal University and Xuzhou Institute of Technology. When I've finished teaching, I will take some time off before attending the WCCI 2014 conference in Beijing, where I'm chairing a special session.
While everyone here is very friendly and go out of their way to be helpful, there is one thing I dislike about China: the internet censorship. This means that I can't access Blogger directly to post or check updates before they post, so I have to do it via email. So, I sometimes make mistakes with the formatting, and I can't schedule updates to go live at certain times like I usually do.
I'm also updating Twitter via email, which is a bit easier to do, so you can follow me there if you aren't already. Please bear with me, I will be back in New Zealand mid-July and posts will return to their more usual schedule.
Thursday, June 5, 2014
IEEE Transactions on Evolutionary Computation Volume 18, Number 3, June 2014
Author(s): Y. Sun and D. J. Verschuur
Pages: 309-325
2. Evolutionary Programming for High-Dimensional Constrained Expensive Black-Box Optimization Using Radial Basis Functions
Author(s): R. G. Regis
Pages: 326-347
3. Shift-Based Density Estimation for Pareto-Based Algorithms in Many-Objective Optimization
Author(s): M. Li, S. Yang, and X. Liu
Pages: 348-365
4. Data Clustering Using Variants of Rapid Centroid Estimation
Author(s): M. Yuwono, S. W. Su, B. D. Moulton, and H. T. Nguyen
Pages: 366-377
5. Cooperative Co-Evolution With Differential Grouping for Large Scale Optimization
Author(s): M. N. Omidvar, X. Li, Y. Mei, and X. Yao
Pages: 378-393
6. Optimal Experiment Design for Coevolutionary Active Learning
Author(s): D. L. Ly and H. Lipson
Pages: 394-404
7. Genetic Programming for the Automatic Inference of Graph Models for Complex Networks
Author(s): A. Bailey, M. Ventresca, and B. Ombuki-Berman
Pages: 405-419
8. On the Landscape of Combinatorial Optimization Problems
Author(s): M.-H. Tayarani-N. and A. Prugel-Bennett
Pages: 420-434
9. Cooperative Coevolution With Route Distance Grouping for Large-Scale Capacitated Arc Routing Problems
Author(s): Y. Mei, X. Li, and X. Yao
Pages: 435-449
LETTERS
10. Decomposition of a Multiobjective Optimization Problem into a Number of Simple Multiobjective SubproblemsAuthor(s): H.-L. Liu, F. Gu, and Q. Zhang
Pages: 450-455
11. Sampling Techniques and Distance Metrics in High Dimensional Continuous Landscape Analysis: Limitations and Improvements
Author(s): R. Morgan and M. Gallagher
Pages: 456