Aspect term extraction is a fundamental task in fine-grained sentiment analysis, which aims at detecting customer's opinion targets from reviews on product or service. The traditional supervised models can achieve promising results with annotated datasets, however, the performance dramatically decreases when they are applied to the task of cross-domain aspect term extraction. Existing cross-domain transfer learning methods either directly inject linguistic features into Language models, making it difficult to transfer linguistic knowledge to target domain, or rely on the fixed predefined prompts, which is time-consuming to construct the prompts over all potential aspect term spans. To resolve the limitations, we propose a soft prompt-based joint learning method for cross domain aspect term extraction in this paper. Specifically, by incorporating external linguistic features, the proposed method learn domain-invariant representations between source and target domains via multiple objectives, which bridges the gap between domains with varied distributions of aspect terms. Further, the proposed method interpolates a set of transferable soft prompts consisted of multiple learnable vectors that are beneficial to detect aspect terms in target domain. Extensive experiments are conducted on the benchmark datasets and the experimental results demonstrate the effectiveness of the proposed method for cross-domain aspect terms extraction.
翻译:精细的情绪分析是一项基本任务,目的是从产品或服务的审查中发现客户的见解目标。传统监督的模式可以通过附加说明的数据集取得有希望的成果。然而,当应用到跨域方面提取任务时,业绩会急剧下降。现有的跨域转移学习方法要么直接将语言特征输入语言模型,从而难以将语言知识传输到目标领域,要么依靠固定的预先定义的提示,这需要花费时间,以便在所有潜在期限之间构建提示。为了解决这些局限性,我们提议了一种基于软的快速联合学习方法,用于本文件中的跨域方面提取。具体地说,通过纳入外部语言特征,拟议方法通过多个目标学习源和目标领域之间的域异性表述,从而弥合领域与不同分布方面术语之间的差距。此外,拟议的方法将一套可转让软提示相互推导出,由多个可学习的矢量组成,有利于在目标领域探测方面术语。在基准数据集上进行了广泛的实验性实验,并展示了拟议方法的跨域提取效果。</s>