Continual Machine Reading Comprehension aims to incrementally learn from a continuous data stream across time without access the previous seen data, which is crucial for the development of real-world MRC systems. However, it is a great challenge to learn a new domain incrementally without catastrophically forgetting previous knowledge. In this paper, MA-MRC, a continual MRC model with uncertainty-aware fixed Memory and Adversarial domain adaptation, is proposed. In MA-MRC, a fixed size memory stores a small number of samples in previous domain data along with an uncertainty-aware updating strategy when new domain data arrives. For incremental learning, MA-MRC not only keeps a stable understanding by learning both memory and new domain data, but also makes full use of the domain adaptation relationship between them by adversarial learning strategy. The experimental results show that MA-MRC is superior to strong baselines and has a substantial incremental learning ability without catastrophically forgetting under two different continual MRC settings.
翻译:连续机读理解旨在从连续连续的数据流中逐步学习,而不存取以往所看到的数据,这是开发真实世界 MRC 系统的关键,然而,在不忘记以往知识的情况下逐步学习新领域是一项巨大的挑战。在本文中,提出了MA-MRC这一具有不确定意识固定内存和反向域适应性的持续MRC模型。在MA-MRC中,一个固定尺寸的内存在以前的域数据中储存了少量样本,同时在新的域数据到达时,还存储着一种有不确定性的更新战略。为了渐进学习,MA-MRC不仅通过学习记忆和新域数据来保持稳定的了解,而且还充分利用了它们之间的域适应关系,通过对抗性学习战略。实验结果表明MA-MRC优于强的基线,并且具有巨大的渐进学习能力,而不会在两种不同的连续MRC环境中被灾难性地遗忘。