Showing posts with label special issue. Show all posts
Showing posts with label special issue. Show all posts

Wednesday, September 24, 2025

Journal Special Issues

Journal special issues with upcoming submission deadlines:

Tuesday, January 21, 2025

Journal Special Issues

Journal special issues with upcoming submission deadlines:

Thursday, November 14, 2024

Special Journal Issues

IEEE Transactions on Emerging Topics in Computational Intelligence, Special Issue on Digital Trust for Artificial Intelligence 
Submission deadline: 1 December 2024

Submission deadline: 1 December 2024

IEEE Transactions on Emerging Topics in Computational Intelligence, Special Issue on Neural Architecture Search and Large Machine Learning Models 
Submission deadline: 31 December 2024

Submission deadline: 31 December 2024

IEEE Transactions on Cognitive and Developmental Systems, Special Issue on Bridging the Gap between Machine and Brain in Speech Processing 
Submission deadline: 31 December 2024

IEEE Transactions on Fuzzy Systems, Special Issue on Fuzzy Affective Computing Systems 
Submission deadline: 31 January 2025

IEEE Transactions on Evolutionary Computation, Special Issue on Evolutionary Computation Meets Large Language Models 
Submission deadline: 31 January 2025

Monday, August 19, 2024

Upcoming Journal Special Issue Deadlines

IEEE Transactions on Evolutionary Computation - Special Issue on Evolutionary Dynamic Optimization.

Paper submission deadline: 1 September, 2024


IEEE Transactions on Emerging Topics in Computational Intelligence - Special Issue on Advances in Methodologies for Metaheuristic Algorithms.

Paper submission deadline: 30 September, 2024


IEEE Transactions on Cognitive and Developmental Systems - Special Issue on Bridging the Gap between Machine and Brain in Speech Processing.

Paper submission deadline: 30 September, 2024


IEEE Transaction on Emerging Topics in Computational Intelligence - Special Issue on Digital Trust for Artificial Intelligence.

Paper submission deadline: 1 December, 2024



Paper submission deadline: 31 December, 2024


IEEE Transactions on Fuzzy Systems - Special Issue on Fuzzy Affective Computing Systems.

Paper submission deadline: 31 January, 2025

Wednesday, March 6, 2024

Upcoming Journal Special Issues

Upcoming submission deadlines for journal special issues:
    IEEE Transactions on Fuzzy SystemsSpecial Issue on Deep Neuro-Fuzzy Approaches for Intelligent Big Data Processing - 30 March 2024
        IEEE Transactions on Evolutionary ComputationSpecial Issue on Machine Learning Assisted Evolutionary Computation - 1 April 2024
          IEEE Transactions on Evolutionary ComputationSpecial Issue on Evolutionary Bilevel Optimization - 1 August 2024
            IEEE Transactions on Evolutionary ComputationSpecial Issue on Evolutionary Dynamic Optimization - 1 September 2024

            Saturday, December 9, 2023

            Upcoming Journal Special Issue Deadlines

            Some upcoming journal special issues and deadlines:

            Tuesday, September 12, 2023

            Upcoming Journal Special Issues

            Some upcoming journal special issues and deadlines:



            Friday, February 3, 2023

            Upcoming Journal Special Issues


            Thursday, December 15, 2022

            Upcoming Journal Special Issues

            This post follows an earlier one about upcoming journal special issue deadlines.


            Wednesday, November 9, 2022

            Upcoming Journal Special Issues

            This post follows an earlier one about upcoming deadlines for special issues of AI journals.

            Thursday, July 21, 2022

            Upcoming Special Issues


            Friday, August 11, 2017

            CFP: IEEE TFS Special Issue on Uncertain Multi-Criteria Decision Making Using Evolutionary Algorithms

            1. AIMS AND SCOPE

            Uncertain multi-criteria decision making (UMCDM) is to select or rank objects based on the evaluation done by the decision-maker on several criteria under uncertainty. UMCDM has been proved as a useful means in diverse fields like management, finance, economics, education, environmental protection, medicine, engineering and so on. Due to numerous successful applications, it becomes more and more prevailing.

            It becomes quite a challenging task, as far as the solution methodologies of UMCDM is concerned. The complexity becomes more and more significant in terms of problem size (e.g., number of criteria, size of the search space). Moreover, the solution time has to be reasonable for most of the problems encountered in practice. Hence, the development of advanced multi-criteria evolutionary algorithms has been widely investigated.

            This Special Issue aims to collect the most recent outstanding contributions in both theory and practice, which apply evolutionary algorithms to solve multi-criteria decision making problems under uncertain environments. The original studies that propose novel multi-criteria decision making models under uncertainty and creative solution methodologies by classical and/or evolutionary algorithms are especially welcome.

            2. TOPICS COVERED

            The topics include but are not limited to:
            • Theoretical foundations of UMCDM
            • Evolutionary computation in UMCDM
            • Innovative applications on UMCDM
            • Multi-criteria decision support systems and knowledge-based systems
            • Risk analysis/modelling, sensitivity/robustness analysis

            3. SUBMISSION GUIDELINES

            All authors should read ‘Information for Authors’ before submitting a manuscript http://cis.ieee.org/ieee-transactions-on-fuzzy-systems.html

            Submissions should be through the IEEE TFS journal website http://mc.manuscriptcentral.com/tfs-ieee.

            It is essential that your manuscript is identified as a Special Issue contribution:
            • Ensure you choose ‘Special Issue’ when submitting.
            • A cover letter must be included which includes the title ‘Special Issue on Uncertain Multi-Criteria Decision Making Using Evolutionary Algorithms (DMEA)’

            4. IMPORTANT DATES


            • 31 December 2017: Submission deadline
            • 31 March 2018: Notification of the first round review
            • 31 May 2018: Revised submission due
            • 31 July 2018: Final notice of acceptance/reject
            • October 2018: Special Issue publication

            5. GUEST EDITORS

            Prof. Xiang Li
            Beijing University of Chemical Technology, Beijing, China
            Email: lixiang@mail.buct.edu.cn

            Prof. Samarjit Kar
            National Institute of Technology Durgapur, Durgapur, India
            Email: samarjit.kar@maths.nitdgp.ac.in

            Thursday, February 5, 2015

            Neural Networks Volume 64, Pages 1-64, April 2015

            Special Issue on “Deep Learning of Representations”
            Edited by Yoshua Bengio and Honglak Lee

            1. Editorial introduction to the Neural Networks special issue on Deep Learning of Representations  
            Pages: 1-3
            Author(s): Yoshua Bengio, Honglak Lee

            2. Two-layer contractive encodings for learning stable nonlinear features 
            Pages: 4-11
            Author(s): Hannes Schulz, Kyunghyun Cho, Tapani Raiko, Sven Behnke

            3. Measuring the usefulness of hidden units in Boltzmann machines with mutual information  
            Pages: 12-18
            Author(s): Mathias Berglund, Tapani Raiko, Kyunghyun Cho

            4. Deep learning of support vector machines with class probability output networks 
            Pages: 19-28
            Author(s): Sangwook Kim, Zhibin Yu, Rhee Man Kil, Minho Lee

            5. Expected energy-based restricted Boltzmann machine for classification  
            Pages: 29-38
            Author(s): S. Elfwing, E. Uchibe, K. Doya

            6. Deep Convolutional Neural Networks for Large-scale Speech Tasks  
            Pages: 39-48
            Author(s): Tara N. Sainath, Brian Kingsbury, George Saon, Hagen Soltau, Abdel-rahman Mohamed, George Dahl, Bhuvana Ramabhadran

            7. Frame-by-frame language identification in short utterances using deep neural networks  
            Pages: 49-58
            Author(s): Javier Gonzalez-Dominguez, Ignacio Lopez-Moreno, Pedro J. Moreno, Joaquin Gonzalez-Rodriguez

            8. Challenges in representation learning: A report on three machine learning contests  
            Pages: 59-63
            Author(s): Ian J. Goodfellow, Dumitru Erhan, Pierre Luc Carrier, Aaron Courville, Mehdi Mirza, Ben Hamner, Will Cukierski, Yichuan Tang, David Thaler, Dong-Hyun Lee, Yingbo Zhou, Chetan Ramaiah, Fangxiang Feng, Ruifan Li, Xiaojie Wang, Dimitris Athanasakis, John Shawe-Taylor, Maxim Milakov, John Park, Radu Ionescu, Marius Popescu, Cristian Grozea, James Bergstra, Jingjing Xie, Lukasz Romaszko, Bing Xu, Zhang Chuang, Yoshua Bengio

            Wednesday, January 28, 2015

            CFP: IEEE CIM special issue on "Computational Intelligence for Brain Computer Interfaces"

            IEEE Computational Intelligence Magazine Special Issue on Computational Intelligence for Brain Computer Interfaces
            http://www.husseinabbass.net/ieeecimbci2016.html
            Hussein A. Abbass, Cuntai Guan, Kay Chen Tan

            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

            • 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=ieeecimbci2016

            Important Dates

            15th May, 2015: Submission of Manuscripts
            15th 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

            Professor Hussein Abbass
            University of New South Wales
            Canberra, Northcott Drive, ACT 2600, Australia
            Email: h.abbass@adfa.edu.au

            Professor Cuntai Guan
            Institute for Infocomm Research (I2R),
            1 Fusionopolis Way, Fusionopolis, Singapore 138632
            Email: ctguan@i2r.a-star.edu.sg

            Professor Kay Chen Tan
            National University of Singapore
            4 Engineering Drive, Singapore 117583
            Email: eletankc@nus.edu.sg

            Tuesday, January 27, 2015

            CFP: Evolutionary Computation Journal (MIT Press) special issue on "Combinatorial Optimization Problems"

            Special Issue in Evolutionary Computation Journal, MIT Press, on Combinatorial Optimization Problems

            DESCRIPTION

            Combinatorial Optimization Problems consist in finding an optimal solution (according to some objective function) from a finite search space. These problems arise in Industry and Academia and, unfortunately, most of them cannot be solved efficiently, that is, they are NP-hard and no polynomial time algorithm is known to solve them. For this reason, in the last decades researches have investigated the use of stochastic search algorithms to find near optimal solutions to these problems. In particular, a great research effort has been devoted to the development of metaheuristic algorithms to solve combinatorial optimization problems.

            Successfully solved problems include scheduling, timetabling, network design, transportation and distribution problems, vehicle routing, travelling salesman, graph problems, satisfiability, energy optimization problems, packing problems and planning problems.

            Prominent examples of metaheuristics include evolutionary algorithms, simulated annealing, tabu search, scatter search, memetic algorithms, ant colony optimization, particle swarm optimization, variable neighbourhood search, iterated local search, greedy randomized adaptive search procedures, estimation of distribution algorithms, hyperheuristics and hybrid algorithms.

            We encourage authors to submit original high-quality research on the application of metaheuristic algorithms to combinatorial optimization problems or theoretical aspects of this application.

            SUBMISSION GUIDELINES

            All submissions have to be prepared according to the "guidelines for authors" as published in the journal website at http://ecj.fhv.at. Authors should submit their manuscripts to the Evolutionary Computation Editorial Manager at http://ecj.fhv.at . When submitting a paper, please send at the same time an email to Francisco Chicano (chicano@lcc.uma.es) and a copy to ecj@fhv.at mentioning the special issue, the paper title, and author list to inform about the submission.

            TENTATIVE SCHEDULE

            15 August 2015       submission deadline
            15 December 2015     authors notification
            15 March 2016        authors’ revisions
            1 July 2016          final notification
            15 July 2016         final manuscript
            Winter 2016          tentative publication

            GUEST EDITORS

            Francisco Chicano
            e-mail: chicano@lcc.uma.es
            University of Malaga, Spain

            Christian Blum
            e-mail: christian.blum@ehu.es
            University of the Basque Country, Spain

            Gabriela Ochoa
            e-mail: gabriela.ochoa@cs.stir.ac.uk
            University of Stirling, Scotland, UK

            Monday, January 26, 2015

            CFP: IEEE TFS Special Issue on "Fuzzy Techniques in Financial Modelling and Simulation"

            I. AIMS AND SCOPE

            Computational intelligence has attracted a significant and increasing interest from the financial engineering and economics communities in recent years.  Computational systems capturing sentiments, preferences, behaviour and beliefs, are becoming indispensable in virtually all financial applications, from portfolio selection to proprietary trading, algorithmic trading, and risk management.  The bar has been raised with the revision of regulations, and the required compliance and risk management.  The new rules should be implemented through new processes and supported by developing new computational tools.

            The fuzzy systems domain provides an armoury of techniques to address the challenges currently encountered in the financial engineering area.  Fuzzy logic can be used to effectively describe and incorporate financial experts’ and market participants’ intuition and behaviour, reaching beyond the capabilities of probabilistic models traditionally used in financial modelling.  In addition, fuzzy techniques can be used in conjunction with probabilistic models or with other machine learning techniques, such as evolutionary optimisation methods or neural networks, in order to better address the challenges raised in this area.

            The objective of this special issue is to bring together the most recent advances in the design and application of fuzzy approaches to real problems in financial engineering.  A focus of interest is simulating scenarios at different level of granularity, as well as developing test environments for new financial and banking regulation, while accommodating behavioural aspects.

            II. TOPICS COVERED

            This special issue solicits original contributions on theoretical developments for financial modelling and simulations based on the following paradigms:
            • fuzzy time series         
            • fuzzy data mining
            • fuzzy intelligent          
            • fuzzy optimisation
            • decision-making           
            • fuzzy systems
            • fuzzy granular             
            • fuzzy-rough approaches
            • computing                   
            • evolving fuzzy systems
            • neuro-fuzzy systems     
            • support vector machines

            Application papers of these paradigms to the following financial engineering areas are welcome:
            • agent-based artificial financial markets
            • financial-regulation test environments
            • financial sentiment analysis, emotion mining
            • financial scenarios modelling and simulation
            • algorithmic trading       
            • instruments pricing
            • financial forecasting     
            • risk management
            • contagion analysis        
            • systemic risk modelling
            • portfolio optimization   
            • trading strategies
            • behavioural finance      
            • finance big data analytics

            III. IMPORTANT DATES

            July 1, 2015: Submission deadline
            Oct. 1, 2015: Notification of the first-round review
            Nov. 1, 2015: Revised submission due
            Dec. 15, 2015: Final notice of acceptance/reject

            IV. SUBMISSION GUIDELINES

            Manuscripts should be prepared according to the instruction of the “Information for Authors” section of the journal found and submission should be done through the IEEE TFS journal website: http://mc.manuscriptcentral.com/tfs-ieee Clearly mark “Special Issue on Fuzzy Techniques in Financial Modelling and Simulation” in your cover letter to the Editor-in-Chief. All submitted manuscripts will be reviewed using the standard procedure that is followed for regular submissions.

            V. GUEST EDITORS

            Ronald Yager
            Machine Intelligence Institute
            Iona College, USA
            ryager@iona.edu

            Antoaneta Serguieva
            Financial Computing and Analytics Group
            University College London, UK
            a.serguieva@ucl.ac.uk

            Vasile Palade
            Faculty of Engineering and Computing
            Coventry University, UK
            vasile.palade@coventry.ac.uk

            Hisao Ishibuchi
            Computer Science and Intelligent Systems
            Osaka Prefecture University, Japan
            hisaoi@cs.osakafu-u.ac.jp

            Tuesday, January 20, 2015

            CFP: IEEE TNNLS special issue on "New Developments in Neural Network Structures for Signal Processing, Autonomous Decision, and Adaptive Control"

            There has been continuously increasing interest in applying neural networks to identification and adaptive control of practical systems that are characterized by nonlinearity, uncertainty, communication constraints, and complexity. The past few years have witnessed a variety of new developments in neural-network-based approaches for behavior learning, information processing, autonomous decision, and system control. Biologically inspired neural network structures can significantly enhance the capabilities of information processing, control and computational performance. New discoveries in neurocognitive psychology, sociology, and elsewhere reveal new neurological learning structures with more powerful capabilities in complex problem solving and fast decision in dynamic environments.  The goal of the special issue is to consolidate recent new developments in neural network structures for signal processing, autonomous decision, and adaptive control with application to complex systems. It welcomes contributions from a wide range of research aspects relevant to the topic, including neural computing, adaptive control, cooperative control, autonomous decision systems, mathematical and computational models, neuropsychology decision and control, algorithms, simulation, applications and/or case studies.

            SCOPE OF THE SPECIAL ISSUE

            We invite original contributions related to new neural network structures and methods, adaptive neural network control, from theories, algorithms, modelling to experimental studies and applications. Topics include but are not limited to:
            • Bio-inspired neural network structures for signal processing
            • Cognitive computing and intelligent control
            • Fast satisficing decision & control based on risk, gist and environmental cues
            • Cooperative control using neural network structures
            • Brain-like control design and applications
            • New neural network topologies from neurocognitive psychology studies
            • Neurocomputing structures for fast decision and control in dynamic environments
            • Neural-adaptive learning in distributed multi-agent systems
            • Spike timing-based learning algorithms with hierarchical/complex architectures
            • Autonomous decision and control using neural structures
            • Memory-based reasoning, prediction and control

            Important Dates

            31 Mar 2015 – Deadline for manuscript submission
            31 May 2015 – Notification of authors
            31 June 2015 – Deadline for submission of revised manuscripts
            31 July 2015 – Final decision of acceptance
            Nov. 2015 – Tentative Publication Date

            Guest Editors

            • Y.D. Song, Chongqing University, China, ydsong@cqu.edu.cn 
            • F.L. Lewis, University of Texas at Arlington, USA
            • Marios Polycarpou, University of Cyprus
            • Danil Prokhorov, Toyota Research Institute North America, Ann Arbor, MI.
            • Dongbin Zhao, Institute of Automation, Chinese Academy of Sciences, Beijing

            Submission Instructions

            1. Read the information for Authors at http://cis.ieee.org/tnnls
            2. Submit your manuscript by 31 March 2015 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 New Developments in Neural Network Structures for Signal Processing, Autonomous Decision, and Adaptive Control . Send also an email to guest editor Y.D. Song with subject “TNNLS special issue submission” to notify about your submission.

            Monday, January 19, 2015

            Call For Papers: IEEE CIM special issue on "Computational Intelligence for Changing Environments"

            IEEE Computational Intelligence Magazine Special Issue on Computational Intelligence for Changing Environments
            Amir Hussain, Dacheng Tao, Jonathan Wu and Dongbin Zhao

            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 via:

            https://www.easychair.org/conferences/?conf=ieeecimcdbil2015.

            Important Dates

            1st Feb, 2015: Submission of Manuscripts
            15th April, 2015: Notification of Review Results
            15th May, 2015: Submission of Revised Manuscripts
            15th June, 2015: Submission of Final Manuscripts
            November 2015: Publication

            Guest Editor

            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

            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=ieeecimbci2016

            Important Dates (for February 2016 Issue)

            15th May, 2015: Submission of Manuscripts
            15th 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"

            Emulating brain-like learning performance has been a key challenge for research in neural networks and learning systems, including recognition, memory and perception. In the last few decades, a variety of approaches for brain-like learning and information processing have been proposed, including approaches based on sparse representations or  hierarchical/deep architectures. While capable of achieving impressive performance, these methods still perform poorly compared to biological systems under a wide variety of conditions. With the availability of neuromorphic hardware providing a fundamentally different technique for data representation, neuromorphic systems, using neural spikes to represent the outputs of sensors and for communication between computing blocks, and using spike timing based learning algorithms, have shown appealing computing characteristics.  However, current neuromorphic learning systems cannot yet achieve the performance figures comparable to what machine learning approaches can offer. Neuromorphic systems are also compatible with another framework called cyborg intelligence. Cyborg intelligence aims to deeply integrate machine intelligence with biological intelligence by connecting machines and living beings via brain-machine interfaces, enhancing strengths and compensating for weaknesses by combining the biological cognition capability with the machine computational capability. In cyborg intelligence, the real-time interaction and exchange of information between biological and artificial neural systems is still an important open challenge, and existing learning approaches would not be able to meet such a challenge. The goal of the special issue is to consolidate the efforts for developing a suitable learning framework for neuromorphic systems and cyborg intelligence and promote research activities in this area.

            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 submission
            15 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

            1. Read the information for Authors at http://cis.ieee.org/tnnls
            2. 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.