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A Fusion Information Embedding Method for User Identity Matching Across Social Networks

机译:跨社交网络用户身份匹配的融合信息嵌入方法

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摘要

Aiming at the deficiencies of low accuracy and difficulty in obtaining data for existing cross social network user identity matching algorithms, an algorithm of user identity matching across social networks based on information fusion representation was proposed. Firstly, the seed nodes were used to transform the cross-network problem into a single network problem by using the network merging algorithms. Then the username information was turned to vectors and merged with the topology vector. Finally, with the network representation learning method, account nodes' vectors with information of usernames and topology were acquired for the mission of user identity matching. Experimental results showed that the average F1 measure reached 79.7%, which is improved by 7.3%-28.8% compared with traditional machine learning algorithms and the existing other two algorithms. It can be seen that our algorithm can effectively improve the performance of user identity matching.
机译:针对现有跨社会网络用户身份匹配算法精度低,获取数据困难的缺点,提出了一种基于信息融合表示的跨社会用户身份匹配算法。首先,使用种子节点通过网络合并算法将跨网络问题转换为单个网络问题。然后,用户名信息被转换为向量,并与拓扑向量合并。最后,利用网络表示学习方法,获取具有用户名和拓扑信息的帐户节点向量,以完成用户身份匹配任务。实验结果表明,平均F1度量达到79.7%,与传统的机器学习算法和现有的其他两种算法相比,提高了7.3%-28.8%。可以看出,我们的算法可以有效地提高用户身份匹配的性能。

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