Zhang Jingyuan, Zhang Zequn, Guo Zhi, Jin Li, Liu Kang, Liu Qing
Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190, China.
Key Laboratory of Network Information System Technology (NIST), Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190, China.
Comput Intell Neurosci. 2021 Mar 27;2021:6645871. doi: 10.1155/2021/6645871. eCollection 2021.
Target-oriented opinion words extraction (TOWE) seeks to identify opinion expressions oriented to a specific target, and it is a crucial step toward fine-grained opinion mining. Recent neural networks have achieved significant success in this task by building target-aware representations. However, there are still two limitations of these methods that hinder the progress of TOWE. Mainstream approaches typically utilize position indicators to mark the given target, which is a naive strategy and lacks task-specific semantic meaning. Meanwhile, the annotated target-opinion pairs contain rich latent structural knowledge from multiple perspectives, but existing methods only exploit the TOWE view. To tackle these issues, we formulate the TOWE task as a question answering (QA) problem and leverage a machine reading comprehension (MRC) model trained with a multiview paradigm to extract targeted opinions. Specifically, we introduce a template-based pseudo-question generation method and utilize deep attention interaction to build target-aware context representations and extract related opinion words. To take advantage of latent structural correlations, we further cast the opinion-target structure into three distinct yet correlated views and leverage meta-learning to aggregate common knowledge among them to enhance the TOWE task. We evaluate the proposed model on four benchmark datasets, and our method achieves new state-of-the-art results. Extensional experiments have shown that the pipeline method with our approach could surpass existing opinion pair extraction models, including joint methods that are usually believed to work better.
面向目标的观点词提取(TOWE)旨在识别针对特定目标的观点表达,是迈向细粒度观点挖掘的关键一步。最近的神经网络通过构建目标感知表示在这项任务中取得了显著成功。然而,这些方法仍存在两个局限性,阻碍了TOWE的进展。主流方法通常利用位置指示器来标记给定目标,这是一种简单的策略,缺乏特定于任务的语义含义。同时,带注释的目标-观点对包含从多个角度的丰富潜在结构知识,但现有方法仅利用了TOWE视角。为了解决这些问题,我们将TOWE任务表述为一个问答(QA)问题,并利用通过多视角范式训练的机器阅读理解(MRC)模型来提取目标观点。具体来说,我们引入一种基于模板的伪问题生成方法,并利用深度注意力交互来构建目标感知上下文表示并提取相关观点词。为了利用潜在的结构相关性,我们进一步将观点-目标结构分为三个不同但相关的视角,并利用元学习来聚合它们之间的共同知识以增强TOWE任务。我们在四个基准数据集上评估了所提出的模型,我们的方法取得了新的最优结果。扩展实验表明,采用我们方法的流水线方法可以超越现有的观点对提取模型,包括通常被认为效果更好的联合方法。