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Argument Mining on Twitter: Arguments, Facts and Sources

机译:Twitter上的论据挖掘:论据,事实和来源

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Social media collect and spread on the Web personal opinions, facts, fake news and all kind of information users may be interested in. Applying argument mining methods to such heterogeneous data sources is a challenging open research issue, in particular considering the peculiarities of the language used to write textual messages on social media. In addition, new issues emerge when dealing with arguments posted on such platforms, such as the need to make a distinction between personal opinions and actual facts, and to detect the source disseminating information about such facts to allow for provenance verification. In this paper, we apply supervised classification to identify arguments on Twitter, and we present two new tasks for argument mining, namely facts recognition and source identification. We study the feasibility of the approaches proposed to address these tasks on a set of tweets related to the Grexit and Brexit news topics.
机译:社交媒体收集并在网络上散布个人意见,事实,虚假新闻和用户可能感兴趣的各种信息。将论点挖掘方法应用于此类异构数据源是一个具有挑战性的开放研究问题,尤其是考虑到语言的特殊性用于在社交媒体上写短信。此外,在处理在此类平台上发布的论点时,还会出现新的问题,例如需要区分个人观点和实际事实,并需要检测传播此类事实信息的来源以进行来源验证。在本文中,我们应用监督分类来识别Twitter上的论点,并提出了两个新的论点挖掘任务,即事实识别和源识别。我们在与希腊退欧新闻主题相关的一组推文上研究了提出解决这些任务的方法的可行性。

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