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An Analysis of Topical Proximity in the Twitter Social Graph

机译:Twitter社会图中的局部邻近分析

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Standard approaches of information retrieval are increasingly complemented by social search even when it comes to rational information needs. Twitter, as a popular source of real-time information, plays an important role in this respect, as both the follower-followee graph and the many relationships among users provide a rich set of information pieces about the social network. However, many hidden factors must be considered if social data are to successfully support the search for high-quality information. Here we focus on one of these factors, namely the relationship between content similarity and social distance in the social network. We compared two methods to compute content similarity among twitter users in a one-per-user document collection, one based on standard term frequency vectors, the other based on topic associations obtained by Latent Dirichlet Allocation (LDA). By comparing these metrics at different hop distances in the social graph we investigated the utility of prominent features such as Retweets and Hashtags as predictors of similarity, and demonstrated the advantages of topical proximity vs. textual similarity for friend recommendations.
机译:即使在理性信息需求方面,社会搜索也越来越多地互补信息检索方法。 Twitter是一个流行的实时信息来源,在这方面发挥着重要作用,因为追随者 - 追随图和用户之间的许多关系都提供了关于社交网络的丰富信息。但是,如果社交数据成功支持寻求高质量信息,则必须考虑许多隐藏因素。在这里,我们专注于其中一个因素,即社会网络内容相似性和社会距离之间的关系。我们比较了两种方法来计算Twitter用户之间的内容相似性,基于标准术语频率向量,另一个基于通过潜在Dirichlet分配(LDA)获得的主题关联。通过将这些指标与社交图中的不同跳距离进行比较,我们调查了突出特征的效用,例如转推和哈希特方式作为相似性的预测因素,并展示了主题接近与朋友建议的文本相似性的优势。

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