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Measuring Issue Ownership using Word Embeddings

机译:使用Word嵌入衡量问题所有权

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摘要

Sentiment and topic analysis are common methods used for social media monitoring. Essentially, these methods answers questions such as, "what is being talked about, regarding X", and "what do people feel, regarding X". In this paper, we investigate another venue for social media monitoring, namely issue ownership and agenda setting, which are concepts from political science that have been used to explain voter choice and electoral outcomes. We argue that issue alignment and agenda setting can be seen as a kind of semantic source similarity of the kind "how similar is source A to issue owner P, when talking about issue X", and as such can be measured using word/document embedding techniques. We present work in progress towards measuring that kind of conditioned similarity, and introduce a new notion of similarity for predictive embeddings. We then test this method by measuring the similarity between politically aligned media and political parties, conditioned on bloc-specific issues.
机译:情感和主题分析是用于社交媒体监控的常用方法。本质上,这些方法回答诸如“关于X的话题”和“关于X的人们的感受”之类的问题。在本文中,我们调查了社交媒体监控的另一个场所,即问题所有权和议程设置,这是来自政治科学的概念,已用于解释选民的选择和选举结果。我们认为,问题对齐和议程设置可以看作是一种语义源相似性,例如“在谈论问题X时,源A与发布所有者P有多相似”,因此可以使用单词/文档嵌入来衡量。技术。我们介绍了测量这种条件相似性的工作,并为预测性嵌入引入了相似性的新概念。然后,我们通过测量政治统一的媒体与政党之间的相似性(以集团特定问题为条件)来测试这种方法。

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