Personalized Tourist Attraction Recommendation System Using Collaborative Filtering on Tourist Preferences

Weeriya Supanich, Suwanee Kulkarineetham
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Abstract

A recommendation system becomes a good assistant in filtering various information from diverse sources to perform a matching result to users. These systems can provide a list of recommendations personalized to user preferences and needs. Almost any business can benefit from a recommendation system, including the tourism industry. In this paper, A personalized tourist attraction recommendation system (PTARS) based on a collaborative filtering technique is proposed. The research objective is to find the best model to recommend a customized destination to a new target user based on their preferences and behavior by using a user's travel-related data source acquired by an explicit approach. Our research result exhibits that the best similarity measure that yields the most accurate result is Euclidean distance; that calculation was from the top 25 k-neighbor values.
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基于游客偏好协同过滤的个性化旅游景点推荐系统
推荐系统可以很好地过滤来自不同来源的各种信息,为用户执行匹配结果。这些系统可以根据用户的偏好和需求提供个性化的推荐列表。几乎任何行业都可以从推荐系统中受益,包括旅游业。提出了一种基于协同过滤技术的个性化旅游景点推荐系统(PTARS)。研究的目的是通过显式方法获取用户的旅游相关数据源,寻找最佳模型,根据用户的偏好和行为,向新的目标用户推荐定制目的地。研究结果表明,欧几里得距离是产生最精确结果的最佳相似性度量;该计算来自前25个k-邻居值。
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