希捷:季节性和有功时数引导图增强变压器的下一个POI建议

IF 2.3 Q2 COMPUTER SCIENCE, THEORY & METHODS
Array Pub Date : 2025-04-02 DOI:10.1016/j.array.2025.100385
Alif Al Hasan, Md. Musfique Anwar
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引用次数: 0

摘要

在旅游业等行业,提高个性化服务的最重要挑战之一是根据用户之前的行为和当前环境预测用户近期的活动。POI(兴趣点)推荐对于通过提供个性化的推荐来帮助用户和服务提供商至关重要。然而,这项工作的复杂性源于同时考虑多个变量的需求,例如用户偏好、时间上下文和地理位置。POI的选择还受到一些因素的极大影响,比如POI在期望访问时间内的运行状态、在特定季节访问的可取性以及随着时间的推移其动态受欢迎程度。在最近的研究中,POI的受欢迎程度主要由签到频率决定,而忽略了访客数量、操作限制和时间动态。这些限制导致的建议并不理想,而且没有考虑到实际情况。我们提出了季节性和有功时数引导图增强变压器(SEAGET)模型来解决这些问题。通过将季节、运行状态和时间动态的变化整合到一个图形增强的变压器框架中,SEAGET利用了重新定义的POI流行度。本发明提供了更准确和上下文感知的下一个POI预测,具有优化旅游体验和增强旅游业中基于位置的服务的潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SEAGET: Seasonal and active hours guided graph enhanced transformer for the next POI recommendation
One of the most important challenges for improving personalized services in industries like tourism is predicting users’ near-future movements based on prior behavior and current circumstances. Next POI (Point of Interest) recommendation is essential for helping users and service providers by providing personalized recommendations. The intricacy of this work, however, stems from the requirement to take into consideration several variables at once, such as user preferences, time contexts, and geographic locations. POI selection is also greatly influenced by elements like a POI’s operational status during desired visit times, desirability for visiting during particular seasons, and its dynamic popularity over time. POI popularity is mostly determined by check-in frequency in recent studies, ignoring visitor volumes, operational constraints, and temporal dynamics. These restrictions result in recommendations that are less than ideal and do not take into account actual circumstances. We propose the Seasonal and Active hours-guided Graph-Enhanced Transformer (SEAGET) model as a solution to these problems. By integrating variations in the seasons, operational status, and temporal dynamics into a graph-enhanced transformer framework, SEAGET capitalizes on redefined POI popularity. This invention gives more accurate and context-aware next POI predictions, with potential applications for optimizing tourist experiences and enhancing location-based services in the tourism industry.
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来源期刊
Array
Array Computer Science-General Computer Science
CiteScore
4.40
自引率
0.00%
发文量
93
审稿时长
45 days
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