Geçmişten Günümüze Yapay Sinir Ağları ve Tarihçesi

Yapay sinir ağlarının günümüzde birçok alanda kullanımına rastlamak mümkündür. Yapay sinir ağları, birden fazla nöronun belirli disiplin çerçevesinde bir araya getirilmesiyle bir görevin gerçekleştirilmesi için yapısal, istatistiksel, matematiksel ve felsefi sorunlara çözüm üreten bir bilim dalıdır. Çalışmada yapay sinir ağlarının geçmişten günümüze kadar olan gelişme süreci ve tarihi ele alınmıştır. Ortaya çıktığı ilk günden günümüze kadar gelişim süreci üzerinde durulmuş ve aşama aşama kronolojik olarak elde ettiği değişimler irdelenmiştir.

From Past to Present Artificial Neural Networks and History

It is possible to find artificial neural networks in many places today. Artificial neural networks are a science that produces solutions to structural, statistical, mathematical, and philosophical problems to accomplish a task by bringing multiple neurons together with rules. The development process and history of the artificial neural networks from the past to the present day are discussed in the study. The developmental process has been focused from the first day up to the present day, and the chronological changes have been examined gradually.

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