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Special Issue 'ESoC: Evolving Soft Comp' 2012 : Special Issue 'Evolving Soft Computing Techniques and Applications' @ ASOC | |||||||||||||||
Link: http://www.journals.elsevier.com/applied-soft-computing/call-for-papers/evolving-soft-computing-techniques-and-applications/ | |||||||||||||||
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Call For Papers | |||||||||||||||
CALL for Papers:
------------------- Special Issue: 'Evolving Soft Computing Techniques' http://www.flll.jku.at/sites/default/files/u6/CFP_SI_EvolvingSoftCompTechniques.pdf Journal Applied Soft Computing http://www.journals.elsevier.com/applied-soft-computing/ GUEST EDITORS Abdelhamid Bouchachia Department of Informatics-Systems Group of Software Engineering & Soft Computing University of Klagenfurt, Austria Email: hamid@isys.uni-klu.ac.at Edwin Lughofer Department of Knowledge-Based Mathematical Systems Johannes Kepler University Linz, Austria Email: edwin.lughofer@jku.at Moamar Sayed-Mouchaweh Ecole des Mines de Douai Computer Science and Automatic Control Lab, France Email: moamar.sayed-mouchaweh@mines-douai.fr IMPORTANT DATES Submission deadline: September 1st, 2012 First author notification: December 1st, 2012 Revised version: February 1st, 2012 Final notification: April 1st, 2013 Publication: 2013 SCOPE of the ISSUE In nowadays industrial systems, the necessity of on-line learning becomes more and more an essential aspect, as upcoming new system states, changing operating conditions and environmental influences need to be integrated on demand and on-the-fly into the models. Otherwise, the predictive quality of the models may deteriorate significantly due to severe extrapolation cases. Re-training of the models is usually not a feasible option whenever data from streams is continuously arriving as not terminating within a reasonable time-frame. Thus, recently a field of research emerged which is addressing this problem by using methodologies with the ability to train and permanently update models in an incremental, step-wise manner. The models equipped with these capabilities are called evolving models. This special issue aims at laying a bridge between incremental learning methodologies, concepts, techniques and aspects which are basically motivated within the field of machine learning and any type of soft computing model architectures, favoring some sort of interpretability, mimicking human brain modeling and investigating concepts from evolution theory. This special issue intends to draw a picture of the recent advances and challenges in evolving soft-computing based systems including evolving fuzzy systems, evolving neural networks, dynamic evolutionary algorithms and any evolving hybrid systems (e.g. evolving neuro-fuzzy systems, evolving evolutionary neural networks, dynamic fuzzy evolutionary algorithms, etc.). Particularly, the special issue aims at soliciting contributions dealing with real-world applications that present dynamic facets requiring on-line learning capabilities. The connection of evolving soft computing to specific machine learning and data mining concepts such as active learning, dynamic feature weighting/selection, drift analysis in data streams, complexity reduction issues, outlier treatment as well as reliability issues are of high relevance. TOPICS Evolving fuzzy systems (EFS) including: o Evolving fuzzy classifiers o Evolving fuzzy clustering o Evolving fuzzy regression o Evolving Takagi-Sugeno-Kang fuzzy systems o Evolving neuro-fuzzy approaches o Evolving fuzzy controllers o Stability, process-safety and computational related aspects o Complexity reduction and interpretability issues in EFS o Reliability in model predictions and parameters Evolving neural networks including: o Online learning paradigm o Sequential radial basis functions networks o Online and incremental support vector machines o Online perceptron-like neural networks o Online probabilistic neural networks o Incremental self-organizing maps o Stability and plasticity issues o Issues regarding forgetting Dynamic Evolutionary Algorithms including: o Change detection in the environment o Convergence and computational issues o Adaptive evolutionary computation o Methods and strategies of dynamic optimization o Dynamic multi-objective optimization o Real-world applications of dynamic optimization Hybrid methodologies o incremental genetic fuzzy systems o evolving neuro-fuzzy approaches o adaptive neural network training with GAs Evolving soft computing techniques in connection with o Active and semi-supervised learning strategies o Techniques to address “Concept Drift” o Online/Incremental Feature Selection o Online tuning via human-machine interaction Real-World Applications of evolving soft computing techniques o Online modelling and identification o Online fault detection and decision support systems o Online media classification o Smart systems o Robotics o Applications for mining in huge data bases o Web applications o Adaptive chemometric models o Modeling in dynamic processes o Online time series analysis and stock market forecasting SUBMISSIONS Manuscripts should be submitted via the Elsevier Editorial System http://ees.elsevier.com/asoc/. Please choose “SC: Evolving Techniques” when specifying the Article Type. |
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