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Learning Semantic-preserving Space Using User Profile and Multimodal Media Content from Political Social Network

机译:使用用户简档和来自政治社交网络的多模式媒体内容学习语义保护空间

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The use of social media in politics has dramatically changed the way campaigns are run and how elected officials interact with their constituents. An advanced algorithm is required to analyze and understand this large amount of heterogeneous social media data to investigate several key issues, such as stance and strategy, in political science. Most of previous works concentrate their studies using text-as-data approach, where the rich yet heterogeneous information in the user profile, social relationship, and multimodal media content is largely ignored. In this work, we propose a two-branch network that jointly maps the post contents and politician profile into the same latent space, which is trained using a large-margin objective that combines a cross-instance distance constraint with a within-instance semantic-preserving constraint. Our proposed political embedding space can be utilized not only in reliably identifying political spectrum and message type but also in providing a political representation space for interpretable ease-of-visualization.
机译:The use of social media in politics has dramatically changed the way campaigns are run and how elected officials interact with their constituents.需要一种先进的算法来分析和理解这一大量异构社交媒体数据,以调查政治学中的几个关键问题,例如立场和战略。以前的大多数作品将他们的研究专注于使用文本和数据方法,其中在用户简档,社交关系和多模式媒体内容中丰富但异构的信息很大程度上被忽略了。在这项工作中,我们提出了一个双分支网络,该网络将后内容和政治家配置文件联合映射到相同的潜空间,该空间使用大边距目标训练,该目标将交叉实例距离约束与实例语义组合在一起保留约束。我们提出的政治嵌入空间不仅可以在可靠地识别政治频谱和信息类型方面,还可以用于为可解释的易于可视化提供政治代表性空间。

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