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IM4BigData 2016 : Special Issue on Computational Intelligence, Neural, and Nature-inspired Methods for Big Data Processing | |||||||||||||||
Link: http://www.hindawi.com/journals/cin/si/317317/cfp/ | |||||||||||||||
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Call For Papers | |||||||||||||||
CALL FOR PAPERS
Special Issue on Computational Intelligence, Neural, and Nature-inspired Methods for Big Data Processing a special issue of Computational Intelligence and Neuroscience, Hindawi SCI JCR IF=0.596 (Q4), Scimago SJR=2.9 (Q1) Call for papers ---------------- Today’s complex cyber-physical and information systems are increasingly characterized by the production of big data, a type of content known for its challenging properties. Such data usually combines high dimensionality, large volumes, heterogeneous nature, noisiness, and incompleteness with many other properties that make it exceptionally hard to analyze. As an informal umbrella term, big data is usually characterized by three or more Vs, volume, velocity, variety, and value/variability/virtuality, or by the HACE theorem which emphasizes the heterogeneous, decentralized, and autonomous nature of its sources together with the complexity and evolving dispositions of its internal relationships. An efficient processing (acquisition, transfer, and storage) and analysis (mining, pattern recognition, visualization, classification, and prediction) of such data is a key research challenge that requires sophisticated, intelligent approaches. It has been shown that it is difficult or even impossible to manage and analyze big data using traditional algorithms and technologies. Computational intelligence, neural, and nature-inspired models and methods, on the other hand, have shown ability to successfully tackle a variety of hard real-world problems. However, the complex nature of big data represents even for intelligent methods a number of challenges and opens a variety of research questions. This special issue focuses on recent development and applications of intelligent, neural, and nature-inspired methods to big data processing. It aims to bridge the gap between the big data and computational intelligence communities and provides a common multidisciplinary platform for dissemination of latest research in these fields. Topics: ------- Potential topics include, but are not limited to: - Big data in neuroscience and neuroinformatics - Neural modelling and computing for big data - Deep learning, deep neural networks, neuroevolution, and big data - Bayesian and probabilistic methods for big data - Soft, fuzzy, and neuro-fuzzy systems for big data - Supervised, unsupervised, and reinforcement learning for big data - Swarm intelligence and evolutionary methods for big data - Intelligent big graph representation, visualization, and mining - Intelligent, neural, and nature-inspired pattern recognition in big data - Intelligent, neural, and nature-inspired methods for big sensor networks and streaming data - Parallel, accelerated, and distributed intelligence for big data - High performance computing for intelligent, neural, and nature-inspired systems Papers submitted to this special issue for possible publication must be original and must not be under consideration for publication in any other journal or conference. Authors can submit their manuscripts via the Manuscript Tracking System at http://mts.hindawi.com/submit/journals/cin/imbd/. Important dates: ---------------- Manuscript Due Friday, 27 May 2016 First Round of Reviews Friday, 19 August 2016 Publication Date Friday, 14 October 2016 Guest editors: -------------- Lead Guest Editor Pavel Kromer, VSB-Technical University of Ostrava, Ostrava, Czech Republic Guest Editors Adel Alimi, University of Sfax, Sfax, Tunisia Katarzyna Wegrzyn-Wolska, ESIGETEL, Villejuif, France Vaclav Snasel, VSB-Technical University of Ostrava, Ostrava, Czech Republic |
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