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Research on Quality Evaluation of Online Reservation Hotel APP Based on a RBF Neural Network and Support Vector Machine

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  • Ma Xiang

    (Changchun Vocational Institute of Technology, China)

Abstract

In order to evaluate the quality of online reservation hotel APP, RBF neural and support vector machine are used to evaluate the quality of online reservation hotel APP. First, the basic theory of the RBF neural network is studied, and the training algorithm of the RBF neural network is designed. Second, the basic model of support vector machine is analyzed, and the training algorithm is designed. Third, the evaluation index system of online reservation hotel APP is designed, and the weight of every index is established based on questionnaires and expert interview, and the evaluation simulation is carried out for 25 online reservation hotel APP, results show that the RBF neural network and support vector machine can obtain consistent evaluation results, and the support vector machine has better evaluation performance.

Suggested Citation

  • Ma Xiang, 2020. "Research on Quality Evaluation of Online Reservation Hotel APP Based on a RBF Neural Network and Support Vector Machine," International Journal of Information Systems in the Service Sector (IJISSS), IGI Global, vol. 12(2), pages 50-64, April.
  • Handle: RePEc:igg:jisss0:v:12:y:2020:i:2:p:50-64
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