Hybrid genetic algorithms for feature selection | IEEE Journals & Magazine | IEEE Xplore

Hybrid genetic algorithms for feature selection


Abstract:

This paper proposes a novel hybrid genetic algorithm for feature selection. Local search operations are devised and embedded in hybrid GAs to fine-tune the search. The op...Show More

Abstract:

This paper proposes a novel hybrid genetic algorithm for feature selection. Local search operations are devised and embedded in hybrid GAs to fine-tune the search. The operations are parameterized in terms of their fine-tuning power, and their effectiveness and timing requirements are analyzed and compared. The hybridization technique produces two desirable effects: a significant improvement in the final performance and the acquisition of subset-size control. The hybrid GAs showed better convergence properties compared to the classical GAs. A method of performing rigorous timing analysis was developed, in order to compare the timing requirement of the conventional and the proposed algorithms. Experiments performed with various standard data sets revealed that the proposed hybrid GA is superior to both a simple GA and sequential search algorithms.
Page(s): 1424 - 1437
Date of Publication: 30 November 2004

ISSN Information:

PubMed ID: 15521491

Contact IEEE to Subscribe

References

References is not available for this document.