Data clustering is a popular analysis tool for data statistics in several fields including pattern recognition, data mining, machine learning, image analysis and bioinformatics, in which the information to be analyzed can be of any distribution in size and shape. Clustering is effective as a technique for discerning the structure and unraveling the complex relationship between massive amounts of data. See-See partridge chick’s optimization (SSPCO) algorithm is a new optimization algorithm that is inspired by the behavior of a type of bird called seesee partridge. We propose chaotic map SSPCO optimization method for clustering, which uses a chaotic map to adopt a random sequence with a random starting point as a parameter; the method relies on this parameter to update the positions and velocities of the chicks. In this study, twelve different clustering algorithms were compared on thirteen data sets. The results indicate that the performance of the Chaotic SSPCO method is significantly better than the performance of the other algorithms for data clustering problems.
کلید واژگان :SSPCO Algorithm, Chaotic, Clustering, Clustering Error, Dataset
ارزش ریالی : 300000 ریال
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جزئیات مقاله
- کد شناسه : 2150635373077855
- سال انتشار : 2017
- نوع مقاله : پذیرفته شده در سایر مجلات علمی معتبر و علمی مروری و ISC
- زبان : انگلیسی
- محل پذیرش : Majlesi Journal of Electrical Engineering
- برگزار کنندگان :
- ISSN :
- تاریخ ثبت : 1396/07/03 19:05:30
- ثبت کننده : روح اله امیدوار
- تعداد بازدید : 179
- تعداد فروش : 0