As an important fine-grained sentiment analysis problem, aspect-based sentiment analysis (ABSA), aiming to analyze and understand people's opinions at the aspect level, has been attracting considerable interest in the last decade. To handle ABSA in different scenarios, various tasks are introduced for analyzing different sentiment elements and their relations, including the aspect term, aspect category, opinion term, and sentiment polarity. Unlike early ABSA works focusing on a single sentiment element, many compound ABSA tasks involving multiple elements have been studied in recent years for capturing more complete aspect-level sentiment information. However, a systematic review of various ABSA tasks and their corresponding solutions is still lacking, which we aim to fill in this survey. More specifically, we provide a new taxonomy for ABSA which organizes existing studies from the axes of concerned sentiment elements, with an emphasis on recent advances of compound ABSA tasks. From the perspective of solutions, we summarize the utilization of pre-trained language models for ABSA, which improved the performance of ABSA to a new stage. Besides, techniques for building more practical ABSA systems in cross-domain/lingual scenarios are discussed. Finally, we review some emerging topics and discuss some open challenges to outlook potential future directions of ABSA.
翻译:作为一个重要的微调情绪分析问题,旨在分析和理解人们意见的方面性情绪分析(ABSA)在过去十年中引起了相当大的兴趣。为了在不同情况下处理ABSA,引入了各种任务来分析不同的情绪元素及其关系,包括所涉术语、方面类别、意见术语和情感两极分化。与早期ABSA侧重于单一情绪元素的工作不同,近年来对ABSA涉及多个元素的许多复合语言任务进行了研究,以获取更完整的方面性情感信息。然而,仍然缺乏对ABSA各项任务及其相应解决方案的系统审查,我们打算填写这一调查。更具体地说,我们为ABSA提供一种新的分类,从相关情感元素的轴心上组织现有的研究,重点是ABSA复合任务的最新进展。我们从解决方案的角度总结了ABSA使用预先培训的语言模型的情况,这些语言将改进ABSA的业绩,进入一个新的阶段。此外,我们还要讨论在开放/语言前景展望方面建立一些更实用的ABSA系统的技术。我们最后要审查一些正在出现的问题。