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Achieving Forgetting Prevention and Knowledge Transfer in Continual Learning

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Continual learning (CL) learns a sequence of tasks incrementally with the goal of achieving two main objectives: overcoming catastrophic forgetting (CF) and encouraging knowledge transfer (KT) across tasks. However, most existing techniques focus only on overcoming CF and have no mechanism to encourage KT, and thus do not do well in KT. Although several papers have tried to deal with both CF and KT, our experiments show that they suffer from serious CF when the tasks do not have much shared knowledge. Another observation is that most current CL methods do not use pre-trained models, but it has been shown that such models can significantly improve the end task performance. For example, in natural language processing, fine-tuning a BERT-like pre-trained language model is one of the most effective approaches. However, for CL, this approach suffers from serious CF. An interesting question is how to make the best use of pre-trained models for CL. This paper proposes a novel model called CTR to solve these problems. Our experimental results demonstrate the effectiveness of CTR

Zixuan Ke, Bing Liu, Nianzu Ma, Hu Xu, Lei Shu• 2021

Related benchmarks

TaskDatasetResultRank
Text Classification20News
Accuracy95.63
101
Aspect Sentiment ClassificationASC
Accuracy89.47
40
Document Sentiment ClassificationDSC full
Accuracy89.86
40
Document Sentiment ClassificationDSC small
Accuracy84.34
40
Forgetting Rate20News FR
Accuracy0.42
34
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