Outline

Ingegneria Sismica

Ingegneria Sismica

Application of reinforcement Learning in smart Tourism Personalized Route Dynamic Planning and tourist experience optimization

Author(s): Yanmin Lai1,2, Yanjun Lai1
1Shunde Polytechnic University, Foshan, Guangdong, 528300, China
2Graduate Business School, UCSI University, Kuala Lumpur 56000, Kuala Lumpur, Malaysia
Lai, Yanmin. and Lai, Yanjun. “Application of reinforcement Learning in smart Tourism Personalized Route Dynamic Planning and tourist experience optimization.” Ingegneria Sismica Volume 43 Issue 2: 1-24, doi:10.65102/is2026912.

Abstract

Aiming at the problem that static route recommendation in smart tourism scenarios is difficult to adapt to changes in traffic, weather, passenger flow and tourist preferences, this paper constructs a personalized route dynamic programming model based on reinforcement learning. The model takes tourists’ historical behavior, real-time context, spatial location and itinerary constraints as state input, and combines dynamic action space screening, tourist experience-oriented reward function and asynchronous advantage actor-critic training mechanism to realize the continuous optimization of route recommendation. Experimental results show that the HR@5 and HR@10 of A3C-RL model reach 56.8% and 82.5%, the comprehensive score of route rationality is 87.6, the success rate of dynamic event transfer is 88.0%, and the average replanning delay is 1.12 s. The results show that the proposed method can improve the accuracy of route recommendation, the personalized matching degree and the real-time response ability in unexpected situations, and provide a feasible calculation method for intelligent tourism service optimization.

Keywords
Reinforcement learning; Smart tourism; Personalized route planning; Visitor experience optimization

Related Articles

Huiqiao Liu1
1Yinchuan University of Energy, Ningxia, 750000, China
Xin Zhao1, Yan Li1, Xiangyang Cao1, Qiushuang Li1, Jianing Zhang1
1State Grid Shandong Electric Power Company Economic and Technological Research Institute ShanDong JiNan 250001, China
Dan Yang1
1School of Marxism, Suzhou Polytechnic University, Suzhou, 215104, China
Liuhang Shen1, Xiangwen Sun1
1Ulster college at Shaanxi University of Science &Technology, Xi’an,710021, Shaanxi, China