Alves Patrícia, Martins Helena, Saraiva Pedro, Carneiro João, Novais Paulo, Marreiros Goreti
ALGORITMI Research Centre/LASI, University of Minho, Guimarães, Portugal.
GECAD/LASI, ISEP, Polytechnic of Porto, Porto, Portugal.
User Model User-adapt Interact. 2023 May 15:1-70. doi: 10.1007/s11257-023-09361-2.
To travel in leisure is an emotional experience, and therefore, the more the information about the tourist is known, the more the personalized recommendations of places and attractions can be made. But if to provide recommendations to a tourist is complex, to provide them to a group is even more. The emergence of personality computing and personality-aware recommender systems (RS) brought a new solution for the cold-start problem inherent to the conventional RS and can be the leverage needed to solve conflicting preferences in heterogenous groups and to make more precise and personalized recommendations to tourists, as it has been evidenced that personality is strongly related to preferences in many domains, including tourism. Although many studies on psychology of tourism can be found, not many predict the tourists' preferences based on the Big Five personality dimensions. This work aims to find how personality relates to the choice of a wide range of tourist attractions, traveling motivations, and travel-related preferences and concerns, hoping to provide a solid base for researchers in the tourism RS area to automatically model tourists in the system without the need for tedious configurations, and solve the cold-start problem and conflicting preferences. By performing Exploratory and Confirmatory Factor Analysis on the data gathered from an online questionnaire, sent to Portuguese individuals from different areas of formation and age groups ( = 1035), we show all five personality dimensions can help predict the choice of tourist attractions and travel-related preferences and concerns, and that only neuroticism and openness predict traveling motivations.
休闲旅行是一种情感体验,因此,了解游客的信息越多,就越能做出关于地点和景点的个性化推荐。但是,如果向单个游客提供推荐很复杂,那么向一个群体提供推荐就更是如此。个性计算和个性化感知推荐系统(RS)的出现为传统推荐系统固有的冷启动问题带来了新的解决方案,并且可以成为解决异质群体中相互冲突的偏好并向游客做出更精确和个性化推荐所需的杠杆,因为已经证明个性在包括旅游在内的许多领域都与偏好密切相关。尽管可以找到许多关于旅游心理学的研究,但基于大五人格维度预测游客偏好的研究并不多。这项工作旨在找出个性与各种旅游景点的选择、旅行动机以及与旅行相关的偏好和关注点之间的关系,希望为旅游推荐系统领域的研究人员提供坚实的基础,以便在系统中自动对游客进行建模,而无需繁琐的配置,并解决冷启动问题和相互冲突的偏好。通过对从在线问卷收集的数据进行探索性和验证性因素分析,该问卷发送给来自不同教育背景和年龄组的葡萄牙人(n = 1035),我们表明所有五个个性维度都有助于预测旅游景点的选择以及与旅行相关的偏好和关注点,并且只有神经质和开放性能够预测旅行动机。