基于标签和协同过滤的个性化旅游景点推荐研究

Yanqing Cui, Chuanlin Huang, Yanping Wang
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引用次数: 7

摘要

游客面对大量的旅游景点,花费相当多的时间和精力选择满意的旅游景点。个性化推荐技术的应用是解决这一问题的有效途径。一方面,用户在旅游中的消费频率远低于音乐、电影等其他商品;另一方面,随着旅游景点数量的不断增加,导致了旅游景点个性化推荐中评分数据的稀疏问题。传统的协同过滤算法在旅游景点推荐中效果不理想。本文构建了一个旅游景点标签系统,通过景点标签从景点位置、景点类型、旅游时间、旅游方式四个方面将游客与旅游景点联系起来。通过计算游客与景点标签、旅游景点与景点标签之间的关系,构建用户兴趣模型。然后根据用户兴趣模型预测待推荐新景点的兴趣程度,最后生成旅游景点推荐集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Personalized Tourist Attraction Recommendation based on Tag and Collaborative Filtering
Tourists face a large number of tourist attractions, and spend a considerable amount of time and energy to select satisfactory tourist attractions. The application of personalized recommendation technology is an effective way to solve this problem. On the one hand, users' consumption frequency in tourism is much lower than other commodities such as music and movies; on the other hand, the increasing number of tourist attractions has led to the problem of sparse scoring data in personalized recommendations of tourist attractions. The traditional collaborative filtering algorithm is not satisfactory in the recommendation of tourist attractions. This paper builds a tourist attraction tag system, which links tourists and tourist attractions through the attractions tag from four aspects: location, location type, travel time, and travel method. By calculating the relationship between tourists and attractions tags, tourist attractions and attractions tags, a user interest model is constructed. Then, according to the user interest model, the interest degree of the new attraction to be recommended is predicted, and finally the tourist attraction recommendation set is generated.
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