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Contradiction Detection for Rumorous Claims

机译:摸索索赔的矛盾检测

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摘要

The utilization of social media material in journalistic workflows is increasing, demanding automated methods for the identification of mis- and disinformation. Since textual contradiction across social media posts can be a signal of rumorousness, we seek to model how claims in Twitter posts are being textually contradicted. We identify two different contexts in which contradiction emerges: its broader form can be observed across independently posted tweets and its more specific form in threaded conversations. We define how the two scenarios differ in terms of central elements of argumentation: claims and conversation structure. We design and evaluate models for the two scenarios uniformly as 3-way Recognizing Textual Entailment tasks in order to represent claims and conversation structure implicitly in a generic inference model, while previous studies used explicit or no representation of these properties. To address noisy text, our classifiers use simple similarity features derived from the string and part-of-speech level. Corpus statistics reveal distribution differences for these features in contradictory as opposed to non-contradictory tweet relations, and the classifiers yield state of the art performance.
机译:在新闻工作流程中利用社交媒体材料正在增加,苛刻的自动化方法,用于识别错误和缺陷。由于社交媒体帖子的文本矛盾可以是疯狂的信号,因此我们寻求模拟Twitter帖子中的声明是如何进行的矛盾。我们确定了两个不同的背景,其中矛盾出现:它可以在独立发布的推文中观察到其更广泛的形式及其在螺纹对话中更具体的形式。我们定义了两种情况如何在论证的中心要素方面所不同:索赔和对话结构。我们均匀地设计和评估两种方案的模型,以识别文本意外任务,以便在通用推理模型中隐式地表示索赔和对话结构,而先前的研究使用这些属性的显式或没有表示。要解决嘈杂的文本,我们的分类器使用从字符串和语音级别派生的简单相似性功能。语料库统计显示这些特征的分布差异与非矛盾的推文关系相反,以及艺术表现的分类器产量状态。

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