Abstract

With the rapid development of tourism, tourism revenue, as one of the important indicators to measure the development of the tourism economy, has high research value. The quasi-prediction of tourism revenue can drive the development of a series of related industries and accelerate the development of the domestic economy. When forecasting tourism income, it is necessary to examine the causal relationship between tourism income and local economic development. The traditional cointegration analysis method is to extract the promotion characteristics of tourism income to the local economy and construct a tourism income prediction model, but it cannot accurately describe the causal relationship between tourism income and local economic development and cannot accurately predict tourism income. We propose an optimized forecasting method of tourism revenue based on time series. This method first conducts a cointegration test on the time series data of the relationship between tourism income and local economic development, constructs a two-variable autoregressive model of tourism income and local economy, and uses the swarm intelligence method to test the causal relationship and the relationship between tourism income and local economic development, calculate the proportion of tourism industry, define the calculation result as the direct influence factor of tourism industry on the local economy, calculate the relevant effect of local tourism development and economic income, and construct tourism income optimization forecast model. The simulation results show that the model used can accurately predict tourism revenue.

Highlights

  • Tourism economic forecasting [1,2,3] serves tourism economic decision-making and planning management

  • Tourism economic forecast participates in tourism economic decision-making and planning management and affects decision-making and planning. is important role is mainly reflected in the following aspects: first, through forecasting, reveal the changing trend of tourism economic development in the future [8], for the purpose of formulating tourism economic development. e strategy provides a reliable basis. e formulation of a tourism economic development strategy is the most important tourism economic decision, and every link and every factor that constitutes a tourism economic development strategy, including development goals [9], implementation steps [10], and measures, cannot be separated from the prediction of future trends

  • To formulate a tourism economic development strategy, first of all, it is necessary to predict and make reasonable predictions about a series of unknowns, such as the overall development of the national economy [11, 12], changes in economic structure, changes in national policies, and changes in population quantity and quality, in order to grasp the possibility of the development of the tourism economy of the country and propose feasible development goals; secondly, it is necessary to predict the changes in the market within a certain period of time, the changes in the industrial structure of the tourism economy, the changes in the Scientific Programming product structure, and the changes in reception capacity

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Summary

Introduction

Tourism economic forecasting [1,2,3] serves tourism economic decision-making and planning management. The role of forecasting is limited to speculating on the economic process specified by tourism economic decision-making and planning management and includes foreseeing the changes and prospects of the external environment related to it. As a forecasting tool that “advances with the times,” machine learning can be self-optimized with the continuous enrichment of future tourism economic data so that the forecasting method can be constructed “once and forever” and “excellent” in terms of results. Erefore, machine learning can help companies discover financial problems in time to take remedial measures; provide investors, corporate partners, and other stakeholders with more financial information to optimize investment decisions; and provide effective methods for regulators to reduce human and material costs and improve market supervision As a forecasting tool that “advances with the times,” machine learning can be self-optimized with the continuous enrichment of future tourism economic data so that the forecasting method can be constructed “once and forever” and “excellent” in terms of results. erefore, machine learning can help companies discover financial problems in time to take remedial measures; provide investors, corporate partners, and other stakeholders with more financial information to optimize investment decisions; and provide effective methods for regulators to reduce human and material costs and improve market supervision

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