The IEEE SSCI 2016 Special Session on "Metaheuristics and Hybrid Methods for Combinatorial Optimization Problems"
Paper submission via http://ssci2016.cs.surrey.ac.uk/Paper%20Submission.htm
Aims and scopes:
Optimization problems can be divided into two categories: the first category consists of problems with continuous variables and the second category consists of problems with discrete variables. Among the latter ones, there are a class of problems called combinatorial optimization problems, in which we are looking for the best possible solution from a finite set of discrete decision variables subject to a set of constraints among variables, and this solution may typically be an integer number, a permutation, a subset, or a graph structure.
Combinatorial optimization has important applications in various fields including computer science, management, and engineering. Many such problems (e.g., traveling salesman problems, maximum satisfiability problems, timetabling problems, and scheduling and rostering problems) cannot be solved exactly within reasonable time limits due to the problem instance sizes of practical interest. To achieve a trade-off between solution quality and search completeness, metaheuristic approaches have therefore been widely studied and can be applied, with suitable modifications, to a broad class of combinatorial optimization problems. Some well-known examples of metaheuristics include genetic algorithms, memetic algorithms, ant colony optimization, estimation of distribution algorithms, particle swarm optimisation, stochastic local search, GRASP, simulated annealing, tabu search, and variable neighbourhood search.
The purpose of this special session is to provide a premier forum for researchers to disseminate their high quality and original research results on all kinds of metaheuristics for combinatorial problems either in an application perspective or from a theoretical sense.
Potential topics include, but are not limited to:
· Applications of metaheuristics to combinatorial optimization problem
· In-depth experimental analysis and comparisons between different techniques
· Neighborhoods and efficient algorithms for searching the
· Hybrid methods (e.g., memetic computing, matheuristics, hyperheuristics)
· Meta-analytics and search space landscape analyses
· Theoretical studies of metaheuristics
· Representation techniques
· Multiobjective combinatorial optimization
· Constraint-handling techniques in metaheuristics
· Automated tuning of metaheuristics
· Automated design of metaheuristics
Important dates:
· Paper submission: August 15, 2016
· Paper acceptance: September 12, 2016
· Final submission: October 10, 2016
· Early registration: October 10, 2016
Organisers:
Dr Jingpeng Li
Division of Computing Science & Mathematics
University of Stirling
Stirling, UK
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Dr Rong Qu
School of Computer Science
University of Nottingham
Nottingham, UK
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Prof Yindong Shen
School of Automation
Huazhong University of Science and Technology
Wuhan, China
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