Graph Attention Network for Financial Aspect-based Sentiment Classification with Contrastive Learning

Zhenhuan Huang, Guansheng Wu, Xiang Qian, Baochang Zhang
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Abstract

Aspect-based Sentiment Classification (ASC) task is a challenge in Natural Language Processing (NLP) and is especially important for fields that require detailed analysis like finance. It aims to identify the sentiment polarity of specific aspects in sentences. In addition to tweets and posts directly related to finance, news from such as restaurants and e-commerce may also indirectly affect its stock prices. In previous approaches, attention-based neural network models were mostly adopted to implicitly connect aspects with opinion words for better aspect representations. However, due to the complexity of language and the presence of multiple aspects in a single sentence, these existing models often confuse connections. To tackle this problem, we propose a model named GAS-CL which encodes syntactical structure into aspect representations and refines it with a contrastive loss. Experiments on several datasets confirm that our approach can have better aspect representations and achieve a significant improvement.
基于对比学习的金融方面情感分类图注意网络
基于方面的情感分类(ASC)任务是自然语言处理(NLP)中的一个挑战,对于金融等需要详细分析的领域尤为重要。它旨在识别句子中特定方面的情感极性。除了与金融直接相关的推文和帖子外,来自餐馆和电子商务等方面的消息也可能间接影响其股价。在以往的方法中,大多采用基于注意的神经网络模型来隐式连接方面和意见词,以获得更好的方面表示。然而,由于语言的复杂性和在一个句子中存在多个方面,这些现有的模型经常混淆连接。为了解决这个问题,我们提出了一个名为GAS-CL的模型,该模型将语法结构编码为方面表示,并使用对比损失对其进行改进。在多个数据集上的实验证实了我们的方法可以有更好的方面表示,并取得了显著的改进。
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