Research on rural tourism flow density based on SVR-PSO algorithm

With the rapid development of rural tourism, accurately predicting visitor flow density has become crucial for effective resource management and enhancing visitor satisfaction. This study aims to explore the combination of Support Vector Regression (SVR) models and Particle Swarm Optimization (PSO)...

Full description

Saved in:
Bibliographic Details
Published inProceedings of SPIE, the international society for optical engineering Vol. 13550; pp. 135503E - 135503E-9
Main Author Xie, Ningguang
Format Conference Proceeding
LanguageEnglish
Published SPIE 20.03.2025
Online AccessGet full text
ISBN9781510689053
1510689052
ISSN0277-786X
DOI10.1117/12.3059510

Cover

More Information
Summary:With the rapid development of rural tourism, accurately predicting visitor flow density has become crucial for effective resource management and enhancing visitor satisfaction. This study aims to explore the combination of Support Vector Regression (SVR) models and Particle Swarm Optimization (PSO) algorithms to analyze and forecast rural tourism flow density. By integrating SVR with PSO, we effectively optimized model parameters, improving prediction accuracy using rural tourism flow data from multiple regions and time periods for training and testing. The results indicate that the SVRPSO algorithm significantly outperforms traditional forecasting models, providing more reliable and precise predictions. This approach not only offers feasible insights for rural tourism resource management but also enhances the overall visitor experience.
Bibliography:Conference Location: Huanggang, China
Conference Date: 2024-11-15|2024-11-17
ISBN:9781510689053
1510689052
ISSN:0277-786X
DOI:10.1117/12.3059510