论文标题

社交媒体上的计算讽刺分析:系统评价

Computational Sarcasm Analysis on Social Media: A Systematic Review

论文作者

Kader, Faria Binte, Nujat, Nafisa Hossain, Sogir, Tasmia Binte, Kabir, Mohsinul, Mahmud, Hasan, Hasan, Kamrul

论文摘要

讽刺可以被定义为说或写讽刺与一个人真正想表达的相反,通常是为了侮辱,刺激或娱乐某人。由于文本数据中讽刺性的性质晦涩难懂,因此检测到情感分析研究社区的困难和非常感兴趣。尽管讽刺检测的研究跨越了十多年,但最近已经取得了一些重大进步,包括在多模式环境中采用了无监督的预训练的预训练的变压器并整合上下文以识别讽刺。在这项研究中,我们旨在简要概述英语计算讽刺研究的最新进步和趋势。我们描述了与讽刺有关的相关数据集,方法,趋势,问题,挑战和任务,这些数据集,趋势,问题,挑战和任务是无法检测到的。我们的研究提供了讽刺数据集,讽刺特征及其提取方法以及各种方法的性能分析,可以帮助相关域中的研究人员了解讽刺检测中最新的实践。

Sarcasm can be defined as saying or writing the opposite of what one truly wants to express, usually to insult, irritate, or amuse someone. Because of the obscure nature of sarcasm in textual data, detecting it is difficult and of great interest to the sentiment analysis research community. Though the research in sarcasm detection spans more than a decade, some significant advancements have been made recently, including employing unsupervised pre-trained transformers in multimodal environments and integrating context to identify sarcasm. In this study, we aim to provide a brief overview of recent advancements and trends in computational sarcasm research for the English language. We describe relevant datasets, methodologies, trends, issues, challenges, and tasks relating to sarcasm that are beyond detection. Our study provides well-summarized tables of sarcasm datasets, sarcastic features and their extraction methods, and performance analysis of various approaches which can help researchers in related domains understand current state-of-the-art practices in sarcasm detection.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源