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Tour recommendations by mining photo sharing social media

机译:通过挖掘照片共享社交媒体进行旅游推荐

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With the increasing popularity of photo and video sharing social networks, more and more people have shared their photos or videos with their family members and friends. Therefore, in this paper, we propose a framework for recommending top-k tours to meet user's interest and time frame by using user-generated contents in a photo sharing social network. The proposed framework contains four phases. First, we cluster geotagged locations into landmarks, and further cluster these landmarks into areas by the mean-shift clustering method. Second, we employ the Latent Dirichlet Allocation model to categorize the hashtags posted by users into landmark topics, and then use these topics to characterize landmarks and users. Third, to recommend tours for a user, we compute the tendency (or score) of the user visiting each landmark by the landmark popularity, the attraction of landmark to the user, and how many users similar to the user visit the landmark. Finally, based on the scores computed, we develop a method to recommend top-k tours with highest scores for the user. Unlike most previous methods recommending tours landmark by landmark, our framework recommends tours area by area so that users can avoid going back and forth from one area to another and save plenty of time on transportation, which in turn can visit more landmarks. The experiment results show that our proposed method outperforms the MarkovTopic method in terms of average score and precision. Our proposed framework may help users plan their trips and customize a trip for each user. (C) 2017 Elsevier B.V. All rights reserved.
机译:随着照片和视频共享社交网络的日益普及,越来越多的人与家人和朋友共享他们的照片或视频。因此,在本文中,我们提出了一个框架,用于通过在照片共享社交网络中使用用户生成的内容来推荐前k个游览以满足用户的兴趣和时间范围。拟议的框架包含四个阶段。首先,我们将地理标记的位置聚类为地标,然后通过均值漂移聚类方法将这些地标进一步聚类为区域。其次,我们使用潜在Dirichlet分配模型将用户发布的主题标签分类为地标主题,然后使用这些主题来表征地标和用户。第三,为了为用户推荐游览,我们通过地标受欢迎程度,地标对用户的吸引力以及与该用户相似的用户数来计算用户访问每个地标的趋势(或得分)。最后,根据计算出的分数,我们开发了一种向用户推荐分数最高的前k个游览的方法。与大多数以前的方法按地标推荐旅游地标不同,我们的框架建议按区域推荐地标,这样用户可以避免从一个区域来回来回,并节省大量的交通时间,从而可以访问更多地标。实验结果表明,本文提出的方法在平均分和精度上均优于MarkovTopic方法。我们提出的框架可以帮助用户计划行程并为每个用户定制行程。 (C)2017 Elsevier B.V.保留所有权利。

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