Learning to Continually Learn Rapidly from Few and Noisy Data
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I-Hsien Kuo, Nicholas
Harandi, Mehrtash
Fourrier, Nicolas
Walder, Christian
Ferraro, Gabriela
Suominen, Hanna
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Neural networks suffer from catastrophic forgetting and are unable to sequentially learn new tasks without guaranteed stationarity in data distribution. Continual learning could be achieved via replay { by concurrently training externally stored old data while learning a new task. However, replay becomes less effective when each past task is allocated with less memory. To overcome this difficulty, we supplemented replay mechanics with meta-learning for rapid knowledge acquisition. By employing a meta-learner, which learns a learn-ing rate per parameter per past task, we found that base learners produced strong results when less memory was available. Additionally, our approach inherited several meta-learning advantages for continual learning: it demonstrated strong robustness to continually learn under the presence of noises and yielded base learners to higher accuracy in less updates.
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Proceedings of Machine Learning Research
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