Distilled Meta-learning for Multi-Class Incremental Learning

Author:

Liu Hao1ORCID,Yan Zhaoyu1ORCID,Liu Bing1ORCID,Zhao Jiaqi1ORCID,Zhou Yong1ORCID,El Saddik Abdulmotaleb2ORCID

Affiliation:

1. China University of Mining and Technology, Jiangsu, China

2. University of Ottawa, Ontario, Canada

Abstract

Meta-learning approaches have recently achieved promising performance in multi-class incremental learning. However, meta-learners still suffer from catastrophic forgetting, i.e., they tend to forget the learned knowledge from the old tasks when they focus on rapidly adapting to the new classes of the current task. To solve this problem, we propose a novel distilled meta-learning (DML) framework for multi-class incremental learning that integrates seamlessly meta-learning with knowledge distillation in each incremental stage. Specifically, during inner-loop training, knowledge distillation is incorporated into the DML to overcome catastrophic forgetting. During outer-loop training, a meta-update rule is designed for the meta-learner to learn across tasks and quickly adapt to new tasks. By virtue of the bilevel optimization, our model is encouraged to reach a balance between the retention of old knowledge and the learning of new knowledge. Experimental results on four benchmark datasets demonstrate the effectiveness of our proposal and show that our method significantly outperforms other state-of-the-art incremental learning methods.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Jiangsu Province

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

Reference45 articles.

1. Rahaf Aljundi, Francesca Babiloni, Mohamed Elhoseiny, Marcus Rohrbach, and Tinne Tuytelaars. 2018. Memory aware synapses: Learning what (not) to forget. In Proceedings of the European Conference on Computer Vision (ECCV’18), Vittorio Ferrari, Martial Hebert, Cristian Sminchisescu, and Yair Weiss (Eds.). Springer International Publishing, Cham, 144–161.

2. Yoshua Bengio, Samy Bengio, and Jocelyn Cloutier. 1990. Learning a Synaptic Learning Rule. Citeseer.

3. F. M. Castro, M. J. Marín-Jiménez, N. Guil, C. Schmid, and K. Alahari. 2018. End-to-end incremental learning. In Proceedings of the European Conference on Computer Vision. 241–257.

4. Arslan Chaudhry, Puneet K. Dokania, Thalaiyasingam Ajanthan, and Philip H. S. Torr. 2018. Riemannian walk for incremental learning: Understanding forgetting and intransigence. In Proceedings of the European Conference on Computer Vision (ECCV’18). 532–547.

5. Meta-learning-based incremental few-shot object detection;Cheng Meng;IEEE Trans Circ. Syst. Vid. Technol.,2021

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