Author/Authors :
Zhao, Maoxian Shandong University of Science and Technology - Qingdao - Shandong, China , Qin, Yue Shandong University of Science and Technology - Qingdao - Shandong, China
Abstract :
For the low optimization accuracy of the cuckoo search algorithm, a new search algorithm, the Elite Hybrid Binary Cuckoo Search
(EHBCS) algorithm, is improved by feature weighting and elite strategy. The EHBCS algorithm has been designed for feature
selection on a series of binary classification datasets, including low-dimensional and high-dimensional samples by SVM
classifier. The experimental results show that the EHBCS algorithm achieves better classification performances compared with
binary genetic algorithm and binary particle swarm optimization algorithm. Besides, we explain its superiority in terms of
standard deviation, sensitivity, specificity, precision, and F-measure.