通过原型对比学习改进连续关系提取

Chengwei Hu, Deqing Yang, Hao Jin, Zhen Chen, Yanghua Xiao
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引用次数: 9

摘要

持续关系抽取(CRE)旨在抽取新数据连续迭代到达的关系,其主要挑战是旧任务的灾难性遗忘。为了缓解这一关键问题,提高CRE的性能,我们提出了一种新的基于对比学习的持续关系提取框架,即CRECL,该框架由分类网络和原型对比网络组成,实现了CRE的增量类学习。具体地说,在对比网络中,给定实例与存储在存储器模块中的每个候选关系的原型进行对比。这种对比学习方案保证了所有任务的数据分布更容易区分,从而进一步减轻灾难性遗忘。我们的实验结果不仅证明了我们的CRECL在两个公共数据集上优于最先进的基线,而且验证了CRECL对比学习在提高性能方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Continual Relation Extraction through Prototypical Contrastive Learning
Continual relation extraction (CRE) aims to extract relations towards the continuous and iterative arrival of new data, of which the major challenge is the catastrophic forgetting of old tasks. In order to alleviate this critical problem for enhanced CRE performance, we propose a novel Continual Relation Extraction framework with Contrastive Learning, namely CRECL, which is built with a classification network and a prototypical contrastive network to achieve the incremental-class learning of CRE. Specifically, in the contrastive network a given instance is contrasted with the prototype of each candidate relations stored in the memory module. Such contrastive learning scheme ensures the data distributions of all tasks more distinguishable, so as to alleviate the catastrophic forgetting further. Our experiment results not only demonstrate our CRECL’s advantage over the state-of-the-art baselines on two public datasets, but also verify the effectiveness of CRECL’s contrastive learning on improving performance.
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