基于BERT融合多注意的方面级情感分析

Jian-qiong Xiao, Xingxian Luo
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引用次数: 1

摘要

针对现有的方面级情感分析(ABSA)模型不能有效区分方面词与文本中词语的重要性,缺乏对方面词与文本整体交互作用的利用的问题,提出了一种基于BERT的结合多注意的方面级情感分析方法。情感分析模型通过文本与方面词的交互注意机制,捕捉方面词与整个文本句子之间的相互作用和相关性,从而提高ABSA的准确性。在Semeval2014评估任务的餐厅和笔记本电脑数据集上进行了对比实验。实验结果表明,本文提出的模型在短文本评论的方面级情感分析任务中取得了较好的分类效果。该方法为复习文本的ABSA提供了新的思路。
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Aspect-level sentiment analysis based on BERT fusion multi-attention
In view of the fact that the existing aspect-level sentiment analysis (ABSA) model cannot effectively distinguish the importance of aspect words and words in the text, and lacks the utilization of the overall interaction between aspect words and text, an aspect-level approach based on BERT combined with multi-attention is proposed. The sentiment analysis model captures the interaction and correlation between aspect words and the overall text sentence through the text and aspect word interactive attention mechanism, thereby improving the accuracy of ABSA. Comparative experiments are carried out on the restaurant and laptop datasets of the Semeval2014 evaluation task. The experimental results show that the model proposed in this paper achieves good classification results in the aspect-level sentiment analysis task for short text reviews. This method provides a new idea for ABSA for review texts.
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