Department of Computer Science, University of Warwick, UK.
Artif Intell Med. 2021 Oct;120:102160. doi: 10.1016/j.artmed.2021.102160. Epub 2021 Sep 1.
Understanding patient opinions expressed towards healthcare services in online platforms could allow healthcare professionals to respond to address patients' concerns in a timely manner. Extracting patient opinion towards various aspects of health services is closely related to aspect-based sentiment analysis (ABSA) in which we need to identify both opinion targets and target-specific opinion expressions. The lack of aspect-level annotations however makes it difficult to build such an ABSA system. This paper proposes a joint learning framework for simultaneous unsupervised aspect extraction at the sentence level and supervised sentiment classification at the document level. It achieves 98.2% sentiment classification accuracy when tested on the reviews about healthcare services collected from Yelp, outperforming several strong baselines. Moreover, our model can extract coherent aspects and can automatically infer the distribution of aspects under different polarities without requiring aspect-level annotations for model learning.
了解患者在在线平台上对医疗保健服务的意见,可以让医疗保健专业人员及时响应,解决患者的问题。提取患者对各种医疗服务的意见与基于方面的情感分析(ABSA)密切相关,在 ABSA 中,我们需要识别出意见目标和针对特定目标的意见表达。然而,由于缺乏方面级别的注释,因此很难构建这样的 ABSA 系统。本文提出了一种联合学习框架,用于在句子级别上进行无监督的方面提取,并在文档级别上进行有监督的情感分类。在从 Yelp 上收集的关于医疗服务的评论上进行测试时,我们的模型实现了 98.2%的情感分类准确性,优于几个强大的基线。此外,我们的模型可以提取连贯的方面,并可以在不需要方面级注释的情况下自动推断不同极性下方面的分布。