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Measuring, Understanding, and Classifying News Media Sympathy on Twitter after Crisis Events

机译:在危机事件后,在Twitter上测量,理解和分类新闻媒体同情

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This paper investigates bias in coverage between Western and Arab media on Twitter after the November 2015 Beirut and Paris terror attacks. Using two Twitter datasets covering each attack, we investigate how Western and Arab media differed in coverage bias, sympathy bias, and resulting information propagation. We crowdsourced sympathy and sentiment labels for 2,390 tweets across four languages (English, Arabic, French, German), built a regression model to characterize sympathy, and thereafter trained a deep convolutional neural network to predict sympathy. Key findings show: (a) both events were disproportionately covered (b) Western media exhibited less sympathy, where each media coverage was more sympathetic towards the country affected in their respective region (c) Sympathy predictions supported ground truth analysis that Western media was less sympathetic than Arab media (d) Sympathetic tweets do not spread any further. We discuss our results in light of global news flow, Twitter affordances, and public perception impact.
机译:本文调查了2015年11月贝鲁特和巴黎恐怖袭击之后Twitter在Twitter之间的覆盖范围覆盖范围。使用涵盖每次攻击的两个Twitter数据集,我们调查西方和阿拉伯媒体如何在覆盖范围,同情偏见和导致信息传播中不同。我们在四种语言(英语,阿拉伯语,法语,德语)中覆盖了2,390名推文的同情和情感标签,建立了一个回归模型,以表征同情,此后培训了深度卷积神经网络来预测同情。主要研究结果显示:(a)两项事件都不成比例地覆盖(b)西方媒体表现出不那么同情,每个媒体覆盖率都更加同情在其各自地区影响的国家(c)同情预测支持的基础事实分析,即西方媒体较少分析与阿拉伯媒体(d)交感神经推断没有进一步扩散。我们根据全球新闻流动,Twitter带来和公众感知影响讨论我们的结果。

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