ACC

Article http://dx.doi.org/10.26855/acc.2023.12.005

Research on the Application of Intelligent Tourism Data Analysis Based on Python

TOTAL VIEWS: 735

Yuncai Luan*, Xiangcai Zhu

School of Information Science and Technology, Taishan University, Tai'an, Shandong, China.

*Corresponding author: Yuncai Luan

Published: January 18,2024

Abstract

With the rapid development of technology, smart tourism has become a disruptive innovation in the tourism industry. This article explores the key role and application scenarios of Python-based data analysis applications in the field of smart tourism. Firstly, we focused on the tourism destination recommendation system and provided a detailed introduction to the principles and applications of personalized recommendation algorithms. These algorithms utilize Python's data analysis libraries, such as Pandas and NumPy, to process a large amount of user data to provide personalized destination recommendations for tourists. Secondly, the field of real-time transportation and route planning was studied, with a focus on real-time traffic data analysis and intelligent route optimization. Python's data processing and machine learning tools are used to analyze traffic conditions, provide the best routes, and help tourists avoid traffic congestion. Finally, we focused on attraction management and experience improvement. Tourist behavior analysis uses Python's data science technologies, such as data mining, to gain insights into tourists' needs and behavior patterns. This enables attraction managers to better optimize service processes, provide personalized guides, and improve the tourist experience.

References

[1] Hu Ximin, Mar Derek, Suzuki Nozomi, Zhang Bowei, Peter Katherine T., Beck David A. C., & Kolodziej Edward P. Mass-Suite: A novel open-source python package for high-resolution mass spectrometry data analysis [J]. Journal of Cheminformatics, 2023, 15(1).

[2] Mischler Gavin, Raghavan Vinay, Keshishian Menoua, & Mesgarani Nima. Naplib-python: Neural acoustic data processing and analysis tools in Python [J]. Software Impacts, 2023, 17.

[3] Kolev Mihail. SVM. Friction: A Python based software for calculating, data analysis and modeling the coefficient of friction of aluminum metal matrix composites using support vector regression [J]. Software Impacts, 2023, 17.

[4] Hadian Jazi Marjan & Sadri Alireza. A Python package based on robust statistical analysis for serial crystallography data processing [J]. Acta Crystallographica. Section D, Structural biology, 2023.

[5] Guoxia Sun. Symmetry analysis in analyzing cognitive and emotional attitudes for tourism consumers by applying artificial intelligence python technology [J]. Symmetry, 2020, 12(4).

How to cite this paper

Research on the Application of Intelligent Tourism Data Analysis Based on Python

How to cite this paper: Yuncai Luan, Xiangcai Zhu. (2023) Research on the Application of Intelligent Tourism Data Analysis Based on Python. Advances in Computer and Communication4(6), 373-377.

DOI: http://dx.doi.org/10.26855/acc.2023.12.005