Emotion Recognition and Sentiment Classification using BERT with Data Augmentation and Emotion Lexicon Enrichment

Vishwa Sai Kodiyala, Robert E. Mercer
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引用次数: 2

Abstract

The emergence of social networking sites has paved the way for researchers to collect and analyze massive data volumes. Twitter, being one of the leading micro-blogging sites worldwide, provides an excellent opportunity for its users to express their states of mind via short text messages known as tweets. Much research focusing on identifying emotions and sentiments conveyed through tweets has been done. We propose a BERT model fine-tuned to the emotion recognition and sentiment classification tasks and show that it performs better than previous models on standard datasets. We also explore the effectiveness of data augmentation and data enrichment for these tasks.
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基于BERT的情感识别和情感分类
社交网站的出现为研究人员收集和分析海量数据铺平了道路。作为全球领先的微博网站之一,Twitter为其用户提供了一个极好的机会,通过被称为tweet的短信来表达他们的思想状态。很多研究都集中在识别通过推特传达的情绪和情绪上。我们提出了一个BERT模型,对情绪识别和情绪分类任务进行了微调,并表明它在标准数据集上比以前的模型表现得更好。我们还探讨了这些任务的数据增强和数据充实的有效性。
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