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Mapping users across social media platforms by integrating text and structure information

机译:通过集成文本和结构信息在社交媒体平台上映射用户

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With the development of social media technology, users often register accounts, post messages and create friend links on several different platforms. Performing user identity mapping on multi-platform based on the behavior patterns of users is considerable for network supervision and personalization service. The existing methods focus on utilizing either text information or structure information alone. However, text information and structure information reflect different aspects of a user. An organic combination of them is beneficial to mining user behavior patterns, thus help identify users across platforms accurately. The challenging problems are the effective representation and similarity computation of the text and structure information. We propose a mapping method which integrates text and structure information. At first, the model represents user name, description, location information based on word2vec or string matching, and friend information represented as relation network is regarded as structure information. Then these information are used for similarity computation using Jaccard index or cosine similarity. After similarity computation, a linear model is adopted to get the overall similarity of user pairs to perform user mapping. Based on the proposed method, we develop a prototype system, which allows users to set and adjust the weights of different information, or set expected index. The experimental results on a real-world dataset demonstrate the efficiency of the proposed model.
机译:随着社交媒体技术的发展,用户经常在几个不同的平台上注册帐户,发布消息并创建朋友链接。基于用户的行为模式在多平台上执行用户身份映射对于网络监管和个性化服务非常重要。现有方法集中于单独利用文本信息或结构信息。但是,文本信息和结构信息反映了用户的不同方面。它们的有机结合有助于挖掘用户的行为模式,从而帮助跨平台准确地识别用户。具有挑战性的问题是文本和结构信息的有效表示和相似度计算。我们提出了一种将文本和结构信息集成在一起的映射方法。首先,该模型表示用户名,描述,基于word2vec或字符串匹配的位置信息,并将表示为关系网络的朋友信息视为结构信息。然后将这些信息用于使用Jaccard索引或余弦相似度的相似度计算。经过相似度计算,采用线性模型得到用户对的整体相似度,进行用户映射。基于提出的方法,我们开发了一个原型系统,该系统允许用户设置和调整不同信息的权重,或者设置预期指标。在真实数据集上的实验结果证明了该模型的有效性。

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