计算机科学
情绪分析
依赖关系(UML)
判决
水准点(测量)
源代码
多任务学习
人工智能
利用
光学(聚焦)
学期
图形
极性(国际关系)
机器学习
依赖关系图
自然语言处理
任务(项目管理)
理论计算机科学
程序设计语言
地理
经济
细胞
光学
生物
遗传学
大地测量学
计算机安全
物理
管理
作者
Guoshuai Zhao,Yiling Luo,Qiang Chen,Xueming Qian
标识
DOI:10.1016/j.knosys.2023.110326
摘要
Aspect based sentiment analysis(ABSA) aims to identify aspect terms in online reviews and predict their corresponding sentiment polarity. Sentiment analysis poses a challenging fine-grained task. Two typical subtasks are involved: Aspect Term Extraction (ATE) and Aspect Polarity Classification (APC). These two subtasks are usually trained discretely, which ignores the connection between ATE and APC. Concretely, we can relate ATE to APC through aspects and train them concurrently. We mainly use the ATE task as an auxiliary task, allowing the APC to focus more on relevant aspects to facilitate aspect polarity classification. In addition, previous studies have shown that utilizing dependency syntax information with a graph neural network (GNN) also contributes to the performance of the APC task. However, most studies directly input sentence dependency relations into graph neural networks without considering the influence of aspects, which do not emphasize the important dependency relationships. To address these issues, we propose a multitask learning model combining APC and ATE tasks that can extract aspect terms as well as classify aspect polarity simultaneously. Moreover, we exploit multihead attention(MHA) to associate dependency sequences with aspect extraction, which not only combines both ATE and APC tasks but also stresses the significant dependency relations, enabling the model to focus more on words closely related to aspects. According to our experiments on three benchmark datasets, we demonstrate that the connection between ATE and APC can be better established by our model, which enhances aspect polarity classification performance significantly. The source code has been released on GitHub https://github.com/winder-source/MTABSA.
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