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Mining Temporal Discriminant Frames via Joint Matrix Factorization: A Case Study of Illegal Immigration in the U.S. News Media

机译:通过联合矩阵因式分解来挖掘时间判别框架:以美国新闻媒体的非法移民为例

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Framing detection has emerged to be an important topic in recent natural language processing research. Although several frameworks have been proposed, little is known about how to detect temporal discriminant frames. This study proposes a framework for discovering temporal discriminant frames, with a focus on identifying emergent frames in news discussions of illegal immigration issue. Built on joint non-negative matrix factorization (NMF), we propose the njNMF algorithm, an improved joint matrix factorization algorithm, to detect the temporal frames. We conducted experiments using the njNMF algorithm to identify emergent frames. The results of our experiments show that framing of illegal immigration changes over time, from human trafficking frames, to more recent economic and criminality frames. These findings suggest the utility of our temporal framing approach and can be used as a framing detection tool for policy researchers to understand the role of news framing in public agenda setting.
机译:在最近的自然语言处理研究中,框架检测已成为重要的话题。尽管已经提出了几种框架,但是关于如何检测时间判别帧知之甚少。这项研究提出了一个发现时间歧视框架的框架,重点是在有关非法移民问题的新闻讨论中确定紧急框架。在联合非负矩阵分解(NMF)的基础上,我们提出了njNMF算法,一种改进的联合矩阵分解算法,用于检测时间帧。我们使用njNMF算法进行了实验,以识别紧急帧。我们的实验结果表明,非法移民的框架随着时间的推移而变化,从人口贩运框架到最近的经济和犯罪框架。这些发现表明我们的时间框架方法的实用性,可以用作政策研究人员了解新闻框架在公共议程设置中的作用的框架检测工具。

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