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Short Text Sentiment Analysis of Micro-blog Based on BERT

机译:基于BERT的微博短文情感分析

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摘要

Micro-blog has become increasingly popular among the general public. It has brought a lot of comment text to researchers for its great convenience, timely updating, and a wide variety of self-focused topics. Identifying the emotions expressed in these comments has become a valuable topic in order to make inferences for focused contents in Micro-blog. In this paper, we report on the effectiveness of the language representation model BERT [1] with respect to the sentiment classification tasks. Experimental results show that the pre-training of deep bidirectional transformers can improve the accuracy, recall and F1 score on sentiment classification. The final evaluation index of this problem by using a Github data set increased by 2.3% on average.
机译:微博在普通大众中越来越受欢迎。它为研究人员带来了极大的便利,及时的更新以及各种各样的自我关注主题,为研究人员带来了很多评论文本。识别这些评论中表达的情感已成为一个有价值的话题,以便对微博中的重点内容进行推断。在本文中,我们报告了语言表示模型BERT [1]在情感分类任务方面的有效性。实验结果表明,深层双向​​变压器的预训练可以提高情感分类的准确性,召回率和F1得分。使用Github数据集对该问题的最终评估指数平均提高了2.3%。

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