Authors
Salwani Abdullah, Nasser R Sabar, Mohd Zakree Ahmad Nazri, Hamza Turabieh, Barry McCollum
Publication date
2010/11/29
Conference
2010 10th International Conference on Intelligent Systems Design and Applications
Pages
1032-1035
Publisher
IEEE
Description
Hyper-heuristics can be defined as search method for selecting or generating heuristics to solve difficult problem. A high level heuristic therefore operate on a set of low level heuristics with the overall aim of selecting the most suitable set of low level heuristics at a particular point in generating an overall solution. In this work, we propose a set of constructive hyper-heuristics for solving attribute reduction problems. At the high level, the hyper-heuristics (at each iteration) adaptively select the most suitable low level heuristics using roulette wheel selection mechanism. Whilst, at the underlying low level, four low level heuristics are used to gradually, and indirectly construct the solution. The proposed hyper-heuristics has been evaluated on a widely used UCI datasets. Results show that our hyper-heuristic produces good quality solutions when compared against other metaheuristic and outperforms other approaches on …
Total citations
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Scholar articles
S Abdullah, NR Sabar, MZA Nazri, H Turabieh… - 2010 10th International Conference on Intelligent …, 2010