Why Estimation Algorithm of First Passage Time Transition Probabilities Concerns Genetic Algorithms Without Bit Mutation?
Journal Title: Computer Reviews Journal - Year 2019, Vol 4, Issue 0
Abstract
Concerning genetic algorithm without bit mutation such as absorbing Markov Chain, our aim is proposition modern algorithm to secure experiential and impractical results concerning first passage time transition probabilities estimation with regard to transient states.
Authors and Affiliations
Usama Hanafy Abou El-Enien
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