Abstract

Urban social civilization and the quality of life of residents are gradually improved, and the development scale and trend of the leisure tourism industry have been growing. This paper constructs a multi-source data fusion model based on an ensemble learning algorithm, uses Ctrip 2020 open data set to train the model, and then obtains the tourism information data processing and prediction results. This paper takes the data of Ctrip as the training set and compares the trained model with the data of tunic and Feizhu. In this paper, sensor detection technology is used to analyze many famous scenic spots in China, including tourist type, gender, and location. The results show that tourism feature extraction results are consistent with data from trending flying bamboo, tunics, and other websites, according to the results of a multi-source fusion of tourism information. Among them, in the data of the first half of 2020, the prediction accuracy of the model after data processing is about 62%. Affected by the epidemic situation, the accuracy of the model is low. In the second half of the year, the prediction accuracy is 78%, which can be used to fuse tourism information in a short time. Therefore, the data show that the model has high learning ability and high trend prediction ability in tourism data processing, which can provide necessary information support for tourists.

Highlights

  • Tourism information processing technology usually uses a POI model related to specific human social activities to represent a group of points in arc tourism information

  • Compared with China’s famous scenic spots, “shows” ranked first, indicating that watching performances are the main activity of tourists in Shengya

  • The data show that the model has high learning ability and high trend prediction ability in tourism data processing, which can provide necessary information support for tourists

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Summary

Introduction

Tourism information processing technology usually uses a POI model related to specific human social activities to represent a group of points in arc tourism information. As a new data source and research idea, it can further analyze the urban leisure tourism space [2]. Oberoi analyzes the distribution characteristics of tourism information services in Guangzhou by using the nearest neighbor distance method and other spatial analysis methods [3]. In terms of coupling analysis of tourism information data and scenic spot data, Bernardi PD uses landscape pattern index, gravity model, gravity model, and coupling analysis to analyze the urban spatial distribution structure of Anhui Province Based on DMSP/OLS image, statistical data, and tourism information data [4]. PON W C selects tourism information data and NPP remote sensing data for kernel density analysis and further analyzes the characteristics of the urban spatial structure of Wuhan City [5]

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