Tourism Demand Forecast Based on Adaptive Neural Network Technology in Business Intelligence.

Liangliang Wang
Author Information
  1. Liangliang Wang: Xinyang Agriculture and Forestry University, Xinyang 464000, China. ORCID

Abstract

In order to improve the effect of tourism demand forecast, the commercial development of the tourism industry, and the actual experience of users, this paper uses adaptive neural network technology to conduct tourism demand forecast analysis. Moreover, this paper improves the adaptive neural network algorithm so that it can handle multiple data for tourism demand forecast. After improving the algorithm, this paper employs the actual process of tourism demand forecast to construct a tourism demand forecast model based on adaptive neural network technology. After that, this paper combines travel time and space data analysis to determine the system's functional structure and network topology. Through experimental research, it can be seen that the tourism demand forecast model based on adaptive neural network technology proposed in this paper performs well in tourism demand forecast and meets the actual demand of modern tourism forecast.

MeSH Term

Algorithms
Intelligence
Neural Networks, Computer
Technology
Tourism

Word Cloud

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