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KANONİK ALGORİTMALAR VE UYARLANABİLİR ALGORİTMALARIN BİLİNEN İKİ PROBLEM İÇİN DEĞERLENDİRİLMESİ

EVALUATION OF CANONICAL ALGORITHMS AND ADAPTIVE ALGORITHMS FOR TWO KNOWN PROBLEMS

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Abstract (2. Language): 
In recent year years, adaptive approaches are getting more interest in application areas. On the other hand, canonical algorithms keep their importance as a first step solution approach and for comparison with adaptive approaches. In this paper, two problems, namely the One-Max Problem and the Generalized Rastrigin’s Function, are solved using generational canonical algorithms with fixed mutation rate parameter and self-adaptive mutation rate parameter. For these problems, solution results of self-adaptive methods are compared with the results of deterministic methods. Observed results provide interesting results for these problems.
Abstract (Original Language): 
Son yıllarda uyarlanabilir yaklaşımlar uygulama alanlarında daha fazla ilgi görmektedir. Diğer taraftan, başvurulan ilk çözüm yöntemi olması ve uyarlanabilir algoritmaların karşılaştırılmasında kullanılması nedeniyle, kanonik algoritmalar hala önemlerini korumaktadırlar. Bu makalede, One- Max Problemi ve Genelleştirilmiş Rastrigin’s Fonksiyonu, hem sabit mutasyon oranı hem de kendinden-uyarlamalı mutasyon oranı kullanılarak çözülmüştür. Kendinden uyarlamalı yöntem ile elde edilen sonuçlar, belirleyici yöntemden elde edilen sonuçlar ile karşılaştırılmıştır. Sonuçların, değerli katkısı olmuştur.
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REFERENCES

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