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Implicit negative link detection on online political networks via matrix tri-factorizations

机译:通过矩阵三分化在线政治网络上隐含负极链接检测

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摘要

Political conversations have become a ubiquitous part of social media. When users interact and engage in discussions, there are usually two mediums available to them; textual conversations and platform-specific interactions such as like, share (Facebook) or retweet (Twitter). Major social media platforms do not facilitate users with negative interaction options. However, many political network analysis tasks rely on not only positive but also negative linkages. Thus, detecting implicit negative links is an important and a challenging task. In this work, we propose an unsupervised framework utilising positive interactions, sentiment cues, and socially balanced triads for detecting implicit negative links. We also present an online variant of it for streaming data tasks. We show the effectiveness of both frameworks with experiments on two annotated datasets of politician Twitter accounts. Our experiments show that the proposed frameworks outperform other well-known and proposed baselines. To illustrate the detected implicit negative links' contribution, we compare the community detection accuracies using unsigned and signed networks. Experimental results using detected negative links show superiority on the three datasets where the camps are known a priori. We also present qualitative evaluations of polarisation patterns between communities which are only possible in the presence of negative links.
机译:政治谈话已成为社交媒体的无处不在的部分。当用户互动和参与讨论时,通常有两种媒体;文本对话和特定于平台的互动,例如,共享(Facebook)或转发(Twitter)。主要的社交媒体平台不促进具有负互动选项的用户。然而,许多政治网络分析任务不仅肯定是积极的,而且依赖于负联动。因此,检测隐式的负链接是一个重要的和一个具有挑战性的任务。在这项工作中,我们提出了一种无监督的框架,利用积极的相互作用,情绪线索和社会平衡三联人来检测隐式负极连接。我们还提供了一个用于流式传输数据任务的在线变体。我们展示了两个框架的有效性与实验在两位政治家推特账户的两个注释数据集上。我们的实验表明,所提出的框架优于其他众所周知和提出的基线。为了说明检测到的隐式负极链接的贡献,我们使用无符号和签名网络进行比较社区检测精度。使用检测到的负极连接的实验结果显示了在营地已知先验的三个数据集上的优越性。我们还提供了在存在负极链路存在下仅可能的社区之间的极化模式的定性评估。

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