Comparison of Some Methods for Estimating Poisson Regression Model Parameters Using the Genetic Algorithm
DOI:
https://doi.org/10.61841/dnb64879Keywords:
Artificial Intelligence, Genetic algorithms, Poisson Equation, maximum likelihood estimation, Bayesian Poisson regressionAbstract
The Poisson regression model is one of the mostant log-linear models and this model is suitable for analyzing data in the form of a Counting data Or rates This model deals with the effects of the response variable that are rare in This paper, the procedure for the maximum likelihood estimation of the regression coefficient apply for Poisson regression and the Bayesian Poisson regression using some of Artificial intelligence algorithms
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