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Automatic detection of satire in Twitter: A psycholinguistic-based approach

机译:Twitter中讽刺作品的自动检测:一种基于心理语言学的方法

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In recent years, a substantial effort has been made to develop sophisticated methods that can be used to detect figurative language, and more specifically, irony and sarcasm. There is, however, an absence of new approaches and research works that analyze satirical texts. The recognition of satire by sentiment analysis and Natural Language Processing (NLP) applications is extremely important because it can influence and change the meaning of a statement in varied and complex ways. We used this understanding as a basis to propose a method that employs a wide variety of psycholinguistic features and which detects satirical and non-satirical text. We then went on to train a set of machine learning algorithms that would enable us to classify unknown data. Finally, we conducted several experiments in order to detect the most relevant features that generate a better pattern as regards detecting satirical texts. We evaluated the effectiveness of our method by obtaining a corpus of satirical and non-satirical news from Mexican and Spanish Twitter accounts. Our proposal obtained encouraging results, with an F-measure of 85.5% for Mexico and one of 84.0% for Spain. Moreover, the results of the experiment showed that there is no significant difference between Mexican and Spanish satire. (C) 2017 Elsevier B.V. All rights reserved.
机译:近年来,已经做出了巨大的努力来开发复杂的方法,这些方法可用于检测比喻性语言,尤其是讽刺和讽刺。但是,缺少分析讽刺文本的新方法和研究工作。通过情感分析和自然语言处理(NLP)应用程序来识别讽刺作品极为重要,因为它可以以各种复杂的方式影响和改变陈述的含义。我们以此理解为基础,提出了一种采用多种心理语言特征并检测讽刺和非讽刺文本的方法。然后,我们继续训练一组机器学习算法,这将使我们能够对未知数据进行分类。最后,我们进行了几次实验,以检测最相关的功能,这些功能在检测讽刺文字方面会产生更好的模式。我们通过从墨西哥和西班牙的Twitter帐户中获得了一系列讽刺和非讽刺新闻来评估我们方法的有效性。我们的提案取得了令人鼓舞的结果,墨西哥的F值为85.5%,西班牙为84.0%之一。而且,实验结果表明,墨西哥和西班牙讽刺小说之间没有显着差异。 (C)2017 Elsevier B.V.保留所有权利。

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