计算机科学
情绪分析
领域(数学分析)
人工智能
一般化
自然语言处理
领域知识
语法
桥(图论)
光学(聚焦)
学习迁移
机器学习
医学
数学分析
物理
数学
内科学
光学
作者
Yushi Zeng,Guohua Wang,Haopeng Ren,Yi Cai,Ho-fung Leung,Qing Li,Qingbao Huang
标识
DOI:10.1109/taffc.2023.3292213
摘要
Cross-domain aspect-based sentiment analysis has recently attracted significant attention, which can effectively alleviate the problem of lacking large-scale labeled data for supervised learning based methods. Most of current methods mainly focus on extracting domain-shared syntactic features to conduct the domain adaptation. Due to the language and syntax are diverse between domains, these methods lack generalization and even lead to syntactic transfer errors. External knowledge graphs have rich domain commonsense and share the relational structures between source and target domains. The domain-shared relational structure can effectively bridge the gap across domains and solve the problem of syntactic transfer errors. Moreover, not all the introduced external knowledge is equally important for the cross-domain aspect-based sentiment analysis. Motivated by these, we propose a knowledge-enhanced and topic-guided cross domain aspect-based sentiment analysis model with the domain-shared commonsense relational structure learning module and the topic-guided knowledge attention module. Extensive experiments are conducted and the experimental results evaluate the effectiveness of our proposed model.
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