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Sarcasm detection using machine learning algorithms in Twitter: A systematic review

机译:使用Twitter中的机器学习算法进行讽刺检测:系统评价

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摘要

Recognizing both literal and figurative meanings is crucial to understanding users’ opinions on various topics or events in social media. Detecting the sarcastic posts on social media has received much attention recently, particularly because sarcastic comments in the form of tweets often include positive words that represent negative or undesirable characteristics. The Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) statement was used to understand the application of different machine learning algorithms for sarcasm detection in Twitter. Extensive database searching led to the inclusion of 31 studies classified into two groups: Adapted Machine Learning Algorithms (AMLA) and Customized Machine Learning Algorithms (CMLA). The review results revealed that Support Vector Machine (SVM) was the best and the most commonly used AMLA for sarcasm detection in Twitter. In addition, combining Convolutional Neural Network (CNN) and SVM was found to offer a high prediction accuracy. Moreover, our result showed that using lexical, pragmatic, frequency, and part-of-speech tagging can contribute to the performance of SVM, whereas both lexical and personal features can enhance the performance of CNN-SVM. This work also addressed the main challenges faced by prior scholars when predicting sarcastic tweets. Such knowledge can be useful for future researchers or machine learning developers to consider the major issues of classifying sarcastic posts in social media.
机译:认识到文字和比喻意义对了解用户对社交媒体各种主题或事件的意见至关重要。最近检测社交媒体的讽刺职位受到了很多关注,特别是因为推文形式的讽刺意见通常包括表示负或不期望的特征的正词。系统评价和Meta分析的首选报告项目(PRISMA)声明用于了解不同机器学习算法在推特中的讽刺检测中的应用。广泛的数据库搜索导致将31项分为两组的研究:适用机学习算法(AMLA)和定制的机器学习算法(CMLA)。审查结果显示,支持向量机(SVM)是Twitter中最佳的讽刺检测的最佳和最常用的AMLA。此外,发现结合卷积神经网络(CNN)和SVM来提供高预测精度。此外,我们的结果表明,使用词汇,务实,频率和词语标记可以有助于SVM的性能,而词汇和个人特征可以增强CNN-SVM的性能。这项工作还涉及先前学者在预测讽刺推文时面临的主要挑战。这些知识对于未来的研究人员或机器学习开发人员可以考虑在社交媒体中分类讽刺职位的主要问题。

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