KÜRESEL EN İYİ YAPAY ARI KOLONİ ALGORİTMASI İLE OTOMATİK KÜMELEME

Kümeleme, verilerin analiz edilmesi için önemli bir teknik olup görüntü işleme ve istatistiksel veri analizi başta olmak üzere birçok alanda kullanılmaktadır. Özellikle son yıllarda kümeleme probleminin çözümüne yönelik olarak yapılan çalışmaların arttığı görülmektedir. Bu çalışmada, otomatik kümeleme problemini çözmek amacıyla yapay arı koloni algoritmasının küresel araştırma kabiliyeti geliştirilmiş ve algoritmanın vektörel araştırma yapabilmesi sağlanmıştır. Önerilen yöntem en çok bilinen data ve görüntü setleri üzerinde test edilmiştir. Alınan sonuçlar neticesinde önerilen metodun diğer metotlara oranla daha iyi bir performans sağladığı ve otomatik kümeleme problemlerinin çözümünde rahatlıkla kullanılabileceği görülmüştür.

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