Mining social media to create personalized recommendations for tourist visits

Adrian Daniel Popescu, G. Grefenstette
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引用次数: 33

Abstract

Photo sharing platforms users often annotate their trip photos with landmark names. These annotations can be aggregated in order to recommend lists of popular visitor attractions similar to those found in classical tourist guides. However, individual tourist preferences can vary significantly so good recommendations should be tailored to individual tastes. Here we pose this visit personalization as a collaborative filtering problem. We mine the record of visited landmarks exposed in online user data to build a user-user similarity matrix. When a user wants to visit a new destination, a list of potentially interesting visitor attractions is produced based on the experience of like-minded users who already visited that destination. We compare our recommender to a baseline which simulates classical tourist guides on a large sample of Flickr users.
挖掘社交媒体,为游客提供个性化的旅游推荐
照片分享平台的用户经常在旅行照片上标注地标性的名字。这些注释可以汇总起来,以推荐热门旅游景点的列表,类似于在经典的旅游指南中发现的那些。然而,每个游客的喜好可能会有很大的不同,所以好的建议应该根据个人的口味量身定制。在这里,我们将这种访问个性化视为协同过滤问题。我们挖掘在线用户数据中暴露的访问地标记录,以构建用户-用户相似度矩阵。当用户想要访问一个新的目的地时,根据已经访问过该目的地的志同道合的用户的经验,系统会生成一个潜在有趣的旅游景点列表。我们将我们的推荐与在大量Flickr用户样本中模拟经典旅游指南的基线进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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