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Triadic co-clustering of users, issues and sentiments in political tweets

机译:政治推文中的用户,问题和情绪的三元联合聚类

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摘要

Social network data contains many hidden relationships. The most well known is the communities formed by users. Moreover, typical social network data, such as Twitter, can also be interpreted in terms of three-dimensional relationships; namely the users, issues discussed by the users, and terminology chosen by the users in these discussions. In this paper, we propose a new problem to generate co-clusters in these three dimensions simultaneously. There are three major differences between our problem and the standard co-clustering problem definition: a node can be a member of more than one clusters; all the nodes are not necessarily members of some cluster; and edges are signed and cluster are expected to have high density of positive signed edges, and low density of negative signed edges. We apply our method to the tweets of British politicians just before the Brexit referendum. Our motivation is to discover clusters of politicians, issues and the sentimental words politicians use to express their feelings on these issues in their tweets. (C) 2018 Elsevier Ltd. All rights reserved.
机译:社交网络数据包含许多隐藏的关系。最知名的是用户组成的社区。此外,典型的社交网络数据(例如Twitter)也可以按照三维关系进行解释;即用户,用户讨论的问题以及用户在这些讨论中选择的术语。在本文中,我们提出了一个新的问题来同时在这三个维度上生成共同集群。我们的问题和标准共聚问题定义之间存在三个主要区别:一个节点可以是多个群集的成员;所有节点不一定是某个群集的成员;并且边缘是带符号的,并且群集期望具有高密度的正符号边缘和低密度的负符号边缘。在英国退欧公投之前,我们将方法应用于英国政客的推文。我们的动机是发现一群政治人物,问题以及政治人物用来在推文中表达对这些问题的感性话语。 (C)2018 Elsevier Ltd.保留所有权利。

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