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Using multi-features to partition users for friends recommendation in location based social network

机译:使用多功能在基于位置的社交网络中为用户推荐的朋友进行分区

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摘要

Friend recommendation is an important feature of social network applications to help people make new friends and expand their social circles. However, the user-location and user-user information in location based social network are both too sparse which contributes to a big challenge for recommendation. In this paper, a new multi-feature SVM based friend recommendation model (MF-SVM) is proposed which regarded as a binary classification problem to tackle this challenge. We extract three features of each user by new methods respectively. The kernel density estimation and information entropy are used to smooth the check-in data and highlight the activity level of users to extract spatial-temporal feature. Then the social feature is extracted by considering the diversity of common friends. After that a new topic model improved by LDA is proposed which both considers user reviews and corresponding service description to extract textual feature. Finally, these features are used to train the SVM and whether the users have a friend link can be predicted by our model. The experiments on real-world datasets demonstrate that the proposed method in this paper outperforms the state-of-art friend recommendation methods under different types of evaluation metrics.
机译:朋友推荐是社交网络应用程序的重要功能,可帮助人们结交新朋友并扩大社交圈。但是,基于位置的社交网络中的用户位置和用户用户信息都太稀疏,这给推荐带来了很大的挑战。本文提出了一种新的基于多特征支持向量机的朋友推荐模型(MF-SVM),该模型被认为是解决该挑战的二元分类问题。我们分别通过新方法提取每个用户的三个特征。核密度估计和信息熵用于平滑签入数据并突出显示用户的活动水平以提取时空特征。然后通过考虑共同朋友的多样性来提取社交特征。之后,提出了一种新的主​​题模型,该模型通过LDA进行了改进,该模型同时考虑了用户评论和相应的服务描述以提取文本特征。最后,这些功能用于训练SVM,并且我们的模型可以预测用户是否具有好友链接。在真实数据集上进行的实验表明,在不同类型的评估指标下,本文提出的方法优于最新的朋友推荐方法。

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