Emotion cause pair extraction (ECPE), as one of the derived subtasks of emotion cause analysis (ECA), shares rich inter-related features with emotion extraction (EE) and cause extraction (CE). Therefore EE and CE are frequently utilized as auxiliary tasks for better feature learning, modeled via multi-task learning (MTL) framework by prior works to achieve state-of-the-art (SoTA) ECPE results. However, existing MTL-based methods either fail to simultaneously model the specific features and the interactive feature in between, or suffer from the inconsistency of label prediction. In this work, we consider addressing the above challenges for improving ECPE by performing two alignment mechanisms with a novel A^2Net model. We first propose a feature-task alignment to explicitly model the specific emotion-&cause-specific features and the shared interactive feature. Besides, an inter-task alignment is implemented, in which the label distance between the ECPE and the combinations of EE&CE are learned to be narrowed for better label consistency. Evaluations of benchmarks show that our methods outperform current best-performing systems on all ECA subtasks. Further analysis proves the importance of our proposed alignment mechanisms for the task.
翻译:情感成因提取(ECPE)是情感成因分析(ECA)的衍生子任务之一,它与情感提取(EE)和原因提取(CE)有着丰富的相关特征。因此,EE和CE经常被用作更好的特征学习的辅助任务,通过多任务学习(MTL)框架,通过先行工作模型,通过多任务学习(MTL)框架进行模型,实现最先进的ECPE结果。然而,基于MTL的现有方法要么未能同时模拟具体特征和相互性特征,要么由于标签预测不一致而受到影响。在这项工作中,我们考虑通过使用新颖的A+2Net模型执行两个调整机制来应对上述改进ECPE的挑战。我们首先提出一个功能-任务调整,以明确模拟具体的情感和原因特定特征和共同的互动特征。此外,还实施了一个任务组合校准,在ECPE和E&C的组合之间缩小标签距离,以提高标签的一致性。对基准的评估表明,我们的方法比ECA所有子的当前最佳运行系统要优。进一步分析我们提出的任务调整机制的重要性。