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Discovering Point-of-Interest Signatures Based on Group Features from Geo-social Networking Data

机译:从地理社交网络数据中基于组特征发现兴趣点签名

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In recent years, location-based social networking services (LBSNSs) have become popular, generating a huge volume of geo-social networking data, such as check-in records and geo-tagged photos. The geo-social networking data provide a new source for discovering the real-world user behaviors. The information is useful for different applications, such as location prediction and point-of-interest (POI) recommendation. For LBSNSs, the research in POI recommendation have widely studied the user preferences over POIs and social influences between users. However, POIs are usually favored by or suitable for different kinds of groups, such as a small group, a tight group, or a close group. In this paper, we propose an approach to discovering POI signatures from geo-social networking data. For each POI, we first discover whether it has been visited by any groups of people and the features of these groups from user trajectories. We then generate the signature for each POI based on the discovered group features. We conduct experiments on the real data of the check-in records from Bright kite, and show the various kinds of POI signatures we found.
机译:近年来,基于位置的社交网络服务(LBSNS)变得越来越流行,生成了大量的地理社交网络数据,例如签到记录和带有地理标签的照片。地理社交网络数据为发现现实世界中的用户行为提供了新的来源。该信息对于不同的应用很有用,例如位置预测和兴趣点(POI)推荐。对于LBSNS,POI推荐研究已经广泛研究了用户对POI的偏好以及用户之间的社会影响。但是,POI通常受不同类型的组的青睐或适合,例如一组,一个紧密的组或一个紧密的组。在本文中,我们提出了一种从地理社交网络数据中发现POI签名的方法。对于每个POI,我们首先发现是否有人访问过该POI,并从用户轨迹中发现了这些人群的特征。然后,我们根据发现的组特征为每个POI生成签名。我们对Bright风筝签到记录的真实数据进行了实验,并显示了发现的各种POI签名。

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