BASKIN GEN SEÇİMİ OPERATÖRÜNE DAYALI GENETİK ALGORİTMA MODELİ

Bu çalışmada genetik algoritma için baskın gen seçimi operatörüne dayalı yeni bir model önerilmiştir. Önerilenmodelin performansı iyi bilinen sürekli test fonksiyonları üzerinde incelenerek sonuçlar standart genetikalgoritmaya ait sonuçlarla karşılaştırılmıştır. Elde edilen sonuçlardan önerilen yaklaşımın standart genetikalgoritmanın performansını artırdığı görülmüştür.

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