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Context-aware location recommendation using geotagged photos in social media

机译:使用社交媒体中带有地理标记的照片的上下文感知位置推荐

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摘要

Recently, the increasing availability of digital cameras and the rapid advances in social media have led to the accumulation of a large number of geotagged photos, which may reflect people’s travel experiences in different cities and can be used to generate location recommendations for tourists. Research on this aspect mainly focused on providing personalized recommendations matching a tourist’s travel preferences, while ignoring the context of the visit (e.g., weather, season and time of the day) that potentially influences his/her travel behavior. This article explores context-aware methods to provide location recommendations matching a tourist’s travel preferences and visiting context. Specifically, we apply clustering methods to detect touristic locations and extract travel histories from geotagged photos on Flickr. We then propose a novel context similarity measure to quantify the similarity between any two contexts and develop three context-aware collaborative filtering methods, i.e., contextual pre-filtering, post-filtering and modeling. With these methods, location recommendations like “in similar contexts, other tourists similar to you often visited . . . ” can be provided to the current user. Results of the evaluation with a publicly-available Flickr photo collection show that these methods are able to provide a tourist with location recommendations matching his/her travel preferences and visiting context. More importantly, compared to other state-of-the-art methods, the proposed methods, which employ the introduced context similarity measure, can provide tourists with significantly better recommendations. While Flickr data have been used in this study, these context-aware collaborative filtering (CaCF) methods can also be extended for other kinds of travel histories, such as GPS trajectories and Foursquare check-ins, to provide context-aware recommendations.
机译:最近,随着数码相机的可用性不断提高以及社交媒体的飞速发展,已积累了大量带有地理标签的照片,这些照片可能反映了人们在不同城市的旅行经历,并可用于为游客提供位置建议。在这方面的研究主要集中在提供与游客的旅行偏好相匹配的个性化推荐,而忽略了可能影响其旅行行为的访问环境(例如天气,季节和一天中的时间)。本文探讨了上下文相关的方法,以提供与游客的旅行偏好和访问上下文相匹配的位置建议。具体来说,我们应用聚类方法来检测旅游景点并从Flickr上带有地理标签的照片中提取旅行历史记录。然后,我们提出一种新颖的上下文相似性度量,以量化任意两个上下文之间的相似性,并开发三种上下文感知的协作过滤方法,即上下文预过滤,后过滤和建模。通过这些方法,位置建议例如“在类似的情况下,其他与您相似的游客经常光顾”。 。 。 ”可以提供给当前用户。公开提供的Flickr照片集的评估结果表明,这些方法能够为游客提供与他/她的旅行偏好和访问环境相匹配的位置推荐。更重要的是,与其他最新方法相比,所提出的方法采用了引入的上下文相似性度量,可以为游客提供明显更好的建议。尽管在本研究中使用了Flickr数据,但这些上下文感知协作过滤(CaCF)方法也可以扩展到其他种类的旅行历史记录,例如GPS轨迹和Foursquare签入,以提供上下文感知建议。

著录项

  • 作者

    Huang, Haosheng;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 eng
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