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MLPM 2016 : Special Session on Machine Learning for Predictive Models in Engineering Applications - IEEE ICMLA 2016

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Link: http://www.icmla-conference.org/icmla16/Special%20Session%20on%20Machine%20Learning%20for%20Predictive%20Models%20in%20Engineerig%20Applications.pdf
 
When Dec 18, 2016 - Dec 20, 2016
Where California
Submission Deadline Aug 20, 2016
Notification Due Sep 15, 2016
Final Version Due Oct 15, 2016
Categories    machine learning   engineering applications   data mining   swarm algorithms
 

Call For Papers

The MLPMEA 2016 special session provides an excellent international forum for sharing knowledge and results in theory, methodology and applications of Machine Learning for developing predictive models for different engineering applications. Machine Learning models are efficient for handing complex prediction models due to their outstanding performance in handling large scale datasets with uniform characteristics and noisy data. Examples of MLPMEA 2016 topics of interest include building predictive models using Machine Learning to solve specific engineering problems such as regression and classification problems.
The aim of this work is to obtain a good perspective into the current state of practice of Machine Learning to address various predictive problems. Some topics relevant to this session include, but are not limited to:

Biomedical image analysis/processing, Clustering, Decision Support, Support Vectorn Machine,Time Series, Decision Trees, Fuzzy Logic & Systems, Probabilistic Reasoning, Lazy Learning, Classification, Recommender Systems, Expert Systems, Artificial Neural Networks, Evolutionary Algorithms, Ranking Algorithms, Cognitive Processes, Evolutionary Computing, Swarm Intelligence, Artificial Immune Systems, Markov Model, Chaos Theory, Multi-Valued Logic, Ensemble Techniques, Hybrid Intelligent Models, Reasoning Models,

Applied to

Nuclear Engineering, Sustainable and Renewable Energy, Software Engineering, Biomedical Engineering, Mechanical Engineering, Civil Engineering,
Electrical Engineering, Computer Engineering, Chemical Engineering, Industrial Engineering, Environmental Engineering,

Papers should be submitted for this special session at the regular paper submission website https://cmt.research.microsoft.com/ICMLA2016/. Papers should not exceed a maximum of 6 pages (including abstract, body, tables, figures, and references), and should be submitted as a pdf in 2-column IEEE format. Detailed instructions for submitting the papers are provided on the conference at home page.



Special Session Chairs
Ali Bou Nassif
Department of Electrical and Computer Engineering
University of Sharjah
anassif@sharjah.ac.ae

Mohammad Azzeh
Department of Software Engineering
Applied Science University, Jordan
m.y.azzeh@asu.edu.jo

Shadi Banitaan
Department of Computer Science
University of Detroit Mercy, USA
banitash@udmercy.edu

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