P. N. Suganthan, Nanyang Technological University, Singapore
Associate Professors Ponnuthurai Nagaratnam Suganthan received the B.A degree,
Postgraduate Certificate and M.A degree in Electrical and Information Engineering from
the University of Cambridge, UK in 1990, 1992 and 1994, respectively. He obtained his
Ph.D. degree from the School of Electrical and Electronic Engineering, Nanyang
Technological University, Singapore. He was a predoctoral Research Assistant in the
Department of Electrical Engineering, University of Sydney in 1995–96 and a lecturer in
the Department of Computer Science and Electrical Engineering, University of Queensland
in 1996–99. Since 1999 he has been with the School of Electrical and Electronic
Engineering, Nanyang Technological University, Singapore where he was an Assistant
Professor and now is an Associate Professor. He is an associate editor of the IEEE Trans
on Evolutionary Computation, Information Sciences, Pattern Recognition and Int. J. of
Swarm Intelligence Research Journals. He is a founding co-editor-in-chief of Swarm and
Evolutionary Computation, an Elsevier journal. SaDE (April 2009) paper won "IEEE
Transactions on Evolutionary Computation" outstanding paper award. His research
interests include evolutionary computation, pattern recognition, multi-objective evolutionary
algorithms, bioinformatics, applications of evolutionary computation and neural networks.
He is a Senior Member of the IEEE. He has delivered around 10 plenary talks, tutorials
and invited talks at international meetings in North America, Europe and Asia. Further
details are available from his home page: http://www.ntu.edu.sg/home/epnsugan/
Abstract
Learning Approaches for Search and Optimization Algorithms
Search and optimization algorithms have been employed in all disciplines to solve complex
problems. Evolutionary and heuristic search and optimization algorithms are more
commonly used recently as modern search and optimization problems may not satisfy the
requirements of traditional optimization algorithms. Traditionally, these search algorithms
require users to make decisions regarding the choices of operators, parameter values, etc.
by trial and error before applying these algorithms. In recent years, learning algorithms are
being integrated with search and optimization algorithms to enhance the performances of
these search and optimization algorithms. This tutorial proposes to present the
hybridization between learning algorithms and search & optimization algorithms.
|