Cuckoo Search: State-of-the-Art and Opportunities

04/22/2018
by   Suash Deb, et al.
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Since the development of cuckoo search (CS) by Yang and Deb in 2009, CS has been applied in a diverse range of applications. This paper first outlines the key features of the algorithm and its variants, and then briefly summarizes the state-of-the-art developments in many applications. The opportunities for further research are also identified.

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