Deep Reinforcement Learning based Tourism Experience Path Finding
Deep Reinforcement Learning based Tourism Experience Path Finding

초록

In this paper, we introduce a reinforcement learning-based algorithm for personalized tourist path recommendations. The algorithm employs a reinforcement learning agent to explore tourist regions and identify optimal paths that are expected to enhance tourism experiences. The concept of tourism experience is defined through points of interest (POI) located along tourist paths within the tourist area. These metrics are quantified through aggregated evaluation scores derived from reviews submitted by past visitors. In the experimental setup, the foundational learning model used to find tour paths is the Deep Q-Network (DQN). Despite the limited availability of historical tourist behavior data, the agent adeptly learns travel paths by incorporating preference scores of tourist POIs and spatial information of the travel area.

키워드

Reinforcement LearningPath FindingTour PlanningSmart TourismDigital twin
제목
Deep Reinforcement Learning based Tourism Experience Path Finding
제목 (타언어)
Deep Reinforcement Learning based Tourism Experience Path Finding
저자
박경희김준태
DOI
10.23023/JPT.2023.11.6.021
발행일
2023-12
저널명
Journal of Platform Technology
11
6
페이지
21 ~ 27