Back to Search Start Over

Efficient protocol for data clustering by fuzzy Cuckoo Optimization Algorithm

Authors :
Ehsan Amiri
Shadi Mahmoudi
Source :
Applied Soft Computing. 41:15-21
Publication Year :
2016
Publisher :
Elsevier BV, 2016.

Abstract

This paper presents a new optimization approach for data clustering with COA.High quality results obtained for dataset.This paper presents a new optimization approach for data clustering with COA and fuzzy system for clustering data.An efficient proposal for data clustering by Cuckoo Optimization Algorithm.In this proposal at each iteration, firstly generates r cuckoo's agents. Each cuckoo generates a random solution string and tries to calculate a fitness value for its solution. Data clustering is a technique for grouping similar and dissimilar data. Many clustering algorithms fail when dealing with multi-dimensional data. This paper introduces efficient methods for data clustering by Cuckoo Optimization Algorithm; called COAC and Fuzzy Cuckoo Optimization Algorithm, called FCOAC. The COA by inspire of cuckoo bird nature life tries to solve continuous problems. This algorithm clusters a large dataset to prior determined clusters numbers by this meta-heuristic algorithm and optimal the results by fuzzy logic. Firstly, the algorithm generates a random solutions equal to cuckoo population and with length dataset objects and with a cost function calculates the cost of each solution. Finally, fuzzy logic tries for the optimal solution. The performance of our algorithm is evaluated and compared with COAC, Black hole, CS, K-mean, PSO and GSA. The results show that our algorithm has better performance in comparison with them.

Details

ISSN :
15684946
Volume :
41
Database :
OpenAIRE
Journal :
Applied Soft Computing
Accession number :
edsair.doi...........df6a53fe09faeccd0339cae3e1ca08f9