Enhancing Aspect-Based Sentiment Analysis with Supervised Contrastive Learning

Bin Liang, Wan-Chen Luo, Xiang Li, Lin Gui, Min Yang, Xiaoqi Yu, Ruifeng Xu
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引用次数: 14

Abstract

Most existing aspect-based sentiment analysis (ABSA) research efforts are devoted to extracting the aspect-dependent sentiment features from the sentence towards the given aspect. However, it is observed that about 60% of the testing aspects in commonly used public datasets are unknown to the training set. That is, some sentiment features carry the same polarity regardless of the aspects they are associated with (aspect-invariant sentiment), which props up the high accuracy of existing ABSA models when inevitably inferring sentiment polarities for those unknown testing aspects. Therefore, in this paper, we revisit ABSA from a novel perspective by deploying a novel supervised contrastive learning framework to leverage the correlation and difference among different sentiment polarities and between different sentiment patterns (aspect-invariant/-dependent). This allows improving the sentiment prediction for (unknown) testing aspects in the light of distinguishing the roles of valuable sentiment features. Experimental results on 5 benchmark datasets show that our proposed approach substantially outperforms state-of-the-art baselines in ABSA. We further extend existing neural network-based ABSA models with our proposed framework and achieve improved performance.
用监督对比学习增强面向方面的情感分析
现有的基于方面的情感分析(ABSA)研究大多致力于从句子中提取面向特定方面的依赖于方面的情感特征。然而,我们观察到,在常用的公共数据集中,大约60%的测试方面是不为训练集所知的。也就是说,一些情绪特征具有相同的极性,而不管它们与哪些方面相关(方面不变的情绪),这支持了现有ABSA模型在不可避免地推断那些未知测试方面的情绪极性时的高准确性。因此,在本文中,我们通过部署一种新的监督对比学习框架,从一个新的角度重新审视ABSA,以利用不同情绪极性之间和不同情绪模式之间的相关性和差异(方面不变/依赖)。这允许在区分有价值的情感特征的作用的基础上改进(未知)测试方面的情感预测。在5个基准数据集上的实验结果表明,我们提出的方法在ABSA中大大优于最先进的基线。我们用我们提出的框架进一步扩展了现有的基于神经网络的ABSA模型,并取得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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