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Applying Basic Features from Sentiment Analysis for Automatic Irony Detection

机译:自动讽刺检测的情感分析应用基本特征

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People use social media to express their opinions. Often linguistic devices such as irony are used. From the sentiment analysis perspective such utterances represent a challenge being a polarity reversor (usually from positive to negative). This paper presents an approach to address irony detection from a machine learning perspective. Our model considers structural features as well as, for the first time, sentiment analysis features such as the overall sentiment of a tweet and a score of its polarity. The approach has been evaluated over a set classifiers such as: Naive Bayes, Decision Tree, Maximum Entropy, Support Vector Machine, and for the first time in irony detection task: Multilayer Perceptron. The results obtained showed the ability of our model to distinguish between potentially ironic and non-ironic sentences.
机译:人们使用社交媒体表达他们的意见。通常使用诸如讽刺的语言设备。从情绪分析的角度来看,这种话语代表了一种极性反向运动的挑战(通常从正为负数)。本文提出了一种解决机器学习视角的讽刺检测方法。我们的模型考虑了结构特征,以及第一次情绪分析功能,如推文的总体情绪和其极性的分数。该方法已经通过集分类计进行了评估,例如:天真贝叶斯,决策树,最大熵,支持向量机,以及第一次在Irony检测任务中的第一次:多层的感觉。获得的结果表明我们的模型区分潜在的讽刺和非讽刺句。

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