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BiRT: Bio-inspired Replay in Vision Transformers for Continual Learning

BiRT is a novel continual learning approach using vision transformers that introduces constructive noises and consistency in predictions to prevent catastrophic forgetting and improve performance on CL benchmarks.

Year
2023
Venue
arXiv 2023
Authors
4
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arxiv.org/abs/2305.04769ARXIV-DEFAULT
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Abstract

The ability of deep neural networks to continually learn and adapt to a sequence of tasks has remained challenging due to catastrophic forgetting of previously learned tasks. Humans, on the other hand, have a remarkable ability to acquire, assimilate, and transfer knowledge across tasks throughout their lifetime without catastrophic forgetting. The versatility of the brain can be attributed to the rehearsal of abstract experiences through a complementary learning system. However, representation rehearsal in vision transformers lacks diversity, resulting in overfitting and consequently, performance drops significantly compared to raw image rehearsal. Therefore, we propose BiRT, a novel representation rehearsal-based continual learning approach using vision transformers. Specifically, we introduce constructive noises at various stages of the vision transformer and enforce consistency in predictions with respect to an exponential moving average of the working model. Our method provides consistent performance gain over raw image and vanilla representation rehearsal on several challenging CL benchmarks, while being memory efficient and robust to natural and adversarial corruptions.

Authors

4