Word similarity score as augmented feature in sarcasm detection using deep learning

Joseph Tarigan, A. S. Girsang
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引用次数: 2

Abstract

Sarcasm detection is an important task in natural language processing (NLP). Sarcasm flips the polarity of a sentence and will affect the accuracy of sentiment analysis task. Recent researches incorporate machine learning and deep learning methods to detect sarcasm. Sarcasm can be detected by the occurrence of context disparity. This feature can be detected by observing the similarity score of each word in the sentence. Word embedding vector is used to calculate word similarity score. In this work, the word similarity score is incorporated as an augmented feature in the deep learning model. Three augmenting schemes in deep learning models are observed. Results show that in general, a word similarity score boosts the performance of the classifier. The accuracy of 85.625% with F-Measure of 84.884% was achieved at its best.
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基于深度学习的讽刺检测中的增强特征
讽刺检测是自然语言处理(NLP)中的一项重要任务。讽刺会改变句子的极性,影响情感分析任务的准确性。最近的研究结合了机器学习和深度学习方法来检测讽刺。讽刺可以通过语境差异的出现来检测。这个特征可以通过观察句子中每个单词的相似度得分来检测。用词嵌入向量计算词的相似度。在这项工作中,单词相似度得分被作为深度学习模型中的增强特征。观察了深度学习模型中的三种增强方案。结果表明,在一般情况下,单词相似度分数提高了分类器的性能。准确度为85.625%,F-Measure值为84.884%。
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