Establishment of Genetic Hybrid Neurotourism Algorithm

Xiong Jiang, Jian Li

Abstract


In order to grasp the changing trend of customer churn and improve the prediction accuracy of customer churn, a prediction method of tourism customer churn based on Hybrid Neural Genetics is proposed. The mixed neural genetic algorithm is used to model and predict the customer turnover, estimate the tourism customer value calculation.


Keywords


Mixed Neurogenetics; Tourist Customers; Customer

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References


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DOI: https://doi.org/10.18686/esta.v10i5.515

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