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Automatically Characterizing Targeted Information Operations Through Biases Present in Discourse on Twitter

机译:通过在Twitter上的话语中存在的偏差自动表征目标信息操作

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This paper considers the problem of automatically characterizing biases that may be associated with emerging information operations via artificial intelligence. Accurate analysis of these emerging topics usually requires laborious, manual analysis by experts to annotate millions of tweets to identify biases in new topics. We introduce adaptations of the Word Embedding Association Test [1] to a new domain: information operations. We validate our method using known information operation-related tweets from Twitter's Transparency Reports, and we perform a case study on the COVID-19 pandemic to evaluate our method's performance on non-labeled Twitter data, demonstrating its usability in emerging domains.
机译:本文考虑了通过人工智能自动表征偏差的问题,该偏差可以通过人工智能与新出现的信息操作相关联。对这些新兴主题的准确分析通常需要艰苦的,专家手动分析,以诠释数百万推文,以确定新主题中的偏见。我们将单词嵌入关联测试[1]的适应介绍到新域:信息操作。我们使用来自Twitter的透明度报告的已知信息相关的推文验证了我们的方法,我们对Covid-19大流行进行了案例研究,以评估我们的方法对非标记的Twitter数据的性能,展示了其在新兴域中的可用性。

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