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Detecting irony and sarcasm in microblogs: The role of expressive signals and ensemble classifiers

机译:在微博中检测讽刺和讽刺:富有效应信号和集合分类器的作用

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The automatic detection of sarcasm and irony in user generated contents is one of the most challenging task of Natural Language Processing. In this paper we address this problem by introducing Bayesian Model Averaging (BMA), an ensemble approach to take into account several classifiers according to their reliabilities and their marginal probability predictions. The impact of the most used expressive signals (pragmatic particles and POS tags) have been evaluated in baseline models (traditional classifiers and majority voting) as well as in the proposed BMA approach. Experimental results highlight two main findings: (1) not all the features are equally able to characterize sarcasm and irony and (2) BMA not only outperforms traditional state of the art models, but is also able to ensure notable generalization capabilities both on ironic and sarcastic text.
机译:在用户生成的内容中自动检测讽刺和讽刺是自然语言处理中最具挑战性的任务之一。在本文中,我们通过引入贝叶斯模型平均(BMA)来解决这一问题,这是根据其可靠性及其边际概率预测来考虑若干分类器的集合方法。已经在基线模型(传统分类器和大多数投票)以及提出的BMA方法中评估了最常用的表达信号(务实粒子和POS标签)的影响。实验结果突出显示两个主要结果:(1)并非所有功能都同样能够表征讽刺和讽刺和(2)BMA不仅优于现有技术模型的传统状态,而且还能够确保讽刺和互联化功能讽刺的文本。

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