Sarcasm Detection on Indonesian Twitter Feeds

Dwi A. P. Rahayu, Soveatin Kuntur, Nur Hayatin
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引用次数: 10

Abstract

In social media, some people use positive words to express negative opinion on a topic which is known as sarcasm. The existence of sarcasm becomes special because it is hard to be detected using simple sentiment analysis technique. Research on sarcasm detection in Indonesia is still very limited. Therefore, this research proposes a technique in detecting sarcasm in Indonesian Twitter feeds particularly on several critical issues such as politics, public figure and tourism. Our proposed technique uses two feature extraction methods namely interjection and punctuation. These methods are later used in two different weighting and classification algorithms. The empirical results demonstrate that combination of feature extraction methods, tf-idf, k-Nearest Neighbor yields the best performance in detecting sarcasm.
印尼Twitter feed的讽刺检测
在社交媒体上,一些人使用积极的词汇来表达对某个话题的负面看法,这被称为讽刺。讽刺的存在变得特殊,因为用简单的情感分析技术很难检测到。印尼对讽刺语检测的研究还很有限。因此,本研究提出了一种技术来检测印尼Twitter feed中的讽刺,特别是在政治、公众人物和旅游等几个关键问题上。我们提出的技术采用了两种特征提取方法,即叹号和标点符号。这些方法随后被用于两种不同的加权和分类算法中。实证结果表明,结合特征提取方法、tf-idf、k-最近邻在讽刺检测中表现最佳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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