Bayesci Yaklaşımın Kimyada Kullanımı

Günümüzde Bayesci yaklaşım istatistiğin kullanıldığı birçok alanda revaçta olan bir yaklaşımdır. Stokastik simülasyon tekniği olan Markov Zinciri Monte Carlo yönteminin varlığı, karmaşık ve yüksek boyutlu modellerde bile Bayesci çözümlemelerin elde edilmesine olanak sağlar. Bu kısa derlemenin amacı, Bayesci yaklaşımın temel ilkeleri üzerinde durmak ve Markov Zinciri Monte Carlo yönteminin kimya verileri için nasıl kullanılabileceğini göstermektir

Use of Bayesian Approach in Chemistry

Bayesian approach is a popular topic today in many fields of study in which statistics is used. The availability of stochastic simulation technique such as Markov Chain Monte Carlo makes exact Bayesian solution possible even in very complex and high dimensional models. The purpose of this short review paper is to emphasize the basic principles and to show the use of Markov Chain Monte Carlo technique for Chemistry data.

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