基于多语言神经语言表征的混码政治推文情感分类

R. Kannan, Sridhar Swaminathan, Chutiporn Anutariya, V. Saravanan
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引用次数: 1

摘要

世界各地的人们越来越多地利用社交媒体来表达他们的情感和观点,比如短信。Twitter是一个发展迅速的微博客社交网站,人们可以在这里用精确、简单的方式表达自己的观点。它也成为政府、非政府和个人发表意见和政策公告的平台。从推特中检测情绪有广泛的应用,包括识别个人的焦虑或抑郁,以及衡量一个社区的幸福感或情绪。此外,当推文用两种不同语言的混合码混合语言编写时,情感分类变得复杂。本文的主要目的是将泰米尔语与英语混合的推文分类为正面、负面或中性。这是通过微调预训练的多语言文本表示模型以及深度学习转换器来实现的。所提出的方法在印度的社会问题上进行了大规模的推文实验。我们还提供了不同的机器学习和深度学习模型的比较研究。所提出的基于神经语言表示的架构在分类泰米尔语和codemix推文方面提供了显著的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Multilingual Neural Linguistic Representation for Sentiment Classification of Political Tweets in Code-mix Language
Social media is more and more utilized by people around the world to express their feelings and opinions in the kind of short text messages. Twitter has been a rapidly growing microblogging social networking website where people express their opinions in a precise and simple manner of expressions. It has also become a platform for governmental, non-governmental and individual opinions and policy announcements. Detecting sentiments from tweets has a wide range of applications including identifying the anxiety or depression of individuals and measuring the well-being or mood of a community. In addition, the sentiment classification becomes complex when the tweet is written in codemix language which is a mix of two different languages. The main objective of this paper is to classify tweets written in mix of Tamil and English language into positive, negative, or neutral. This is achieved by fine tuning a pretrained multilingual text representation model as well as deep learning transformers. The proposed approach is experimented with large scale of tweets collected for societal issues in India. We also provide a comparative study of different machine learning and deep learning models. The proposed architecture based on neural linguistic representation provides significant accuracy in classifying both Tamil and codemix tweets.
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