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Partition-based collaborative tensor factorization for POI recommendation

机译:基于分区的协作张量分解用于POI推荐

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The rapid development of location-based social networks U+0028 LBSNs U+0029 provides people with an opportunity of better understanding their mobility behavior which enables them to decide their next location. For example, it can help travelers to choose where to go next, or recommend salesmen the most potential places to deliver advertisements or sell products. In this paper, a method for recommending points of interest U+0028 POIs U+0029 is proposed based on a collaborative tensor factorization U+0028 CTF U+0029 technique. Firstly, a generalized objective function is constructed for collaboratively factorizing a tensor with several feature matrices. Secondly, a 3-mode tensor is used to model all users U+02BC check-in behaviors, and three feature matrices are extracted to characterize the time distribution, category distribution and POI correlation, respectively. Thirdly, each user’s preference to a POI at a specific time can be estimated by using CTF. In order to further improve the recommendation accuracy, PCTF U+0028 Partition-based CTF U+0029 is proposed to fill the missing entries of a tensor after clustering its every mode. Experiments on a real checkin database show that the proposed method can provide more accurate location recommendation.
机译:基于位置的社交网络U + 0028 LBSN的快速发展U + 0029为人们提供了更好地了解其移动行为的机会,使他们能够决定下一个位置。例如,它可以帮助旅行者选择下一步去哪里,或者向推销员推荐最有可能传播广告或销售产品的地方。本文基于协同张量分解U + 0028 CTF U + 0029技术,提出了一种推荐兴趣点U + 0028 POIs U + 0029的方法。首先,构造了一个通用目标函数,用于协同分解具有多个特征矩阵的张量。其次,使用三模式张量对所有用户U + 02BC的签到行为进行建模,并提取三个特征矩阵来分别表征时间分布,类别分布和POI相关性。第三,可以使用CTF估算每个用户在特定时间对POI的偏好。为了进一步提高推荐精度,提出了基于PCTF U + 0028基于分区的CTF U + 0029,在对每个张量模式进行聚类后填充张量的缺失条目。在真实签到数据库上进行的实验表明,该方法可以提供更准确的位置推荐。

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