Litcius/Paper detail

Continual Few-shot Relation Learning via Embedding Space Regularization and Data Augmentation

Chengwei Qin, Shafiq Joty

2022Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)42 citationsDOIOpen Access PDF

Abstract

Existing continual relation learning (CRL) methods rely on plenty of labeled training data for learning a new task, which can be hard to acquire in real scenario as getting large and representative labeled data is often expensive and time-consuming. It is therefore necessary for the model to learn novel relational patterns with very few labeled data while avoiding catastrophic forgetting of previous task knowledge. In this paper, we formulate this challenging yet practical problem as continual few-shot relation learning (CFRL). Based on the finding that learning for new emerging few-shot tasks often results in feature distributions that are incompatible with previous tasks' learned distributions, we propose a novel method based on embedding space regularization and data augmentation. Our method generalizes to new fewshot tasks and avoids catastrophic forgetting of previous tasks by enforcing extra constraints on the relational embeddings and by adding extra relevant data in a self-supervised manner. With extensive experiments we demonstrate that our method can significantly outperform previous state-of-the-art methods in CFRL task settings. 1

Topics & Concepts

ForgettingComputer scienceEmbeddingRegularization (linguistics)Artificial intelligenceRelation (database)Machine learningTask (project management)Feature vectorFeature (linguistics)Data miningPhilosophyEconomicsManagementLinguisticsDomain Adaptation and Few-Shot Learning