Yong Rui
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Papers from this author
Selecting Useful Knowledge from Previous Tasks for Future Learning in a Single Network
Feifei Shi, Peng Wang, Zhongchao Shi, Yong Rui
Auto-TLDR; Continual Learning with Gradient-based Threshold Threshold
Abstract Slides Poster Similar
Continual learning is able to learn new tasks incrementally while avoiding catastrophic forgetting. Recent work has shown that packing multiple tasks into a single network incrementally by iterative pruning and re-training network is a promising method. We build upon this idea and propose an improved version of PackNet, specifically, we propose a novel gradient-based threshold method to reuse the knowledge of the previous tasks selectively when learning new tasks. Our experiments on a variety of classification tasks and different network architectures demonstrate that our method obtains competitive results when compared to PackNet.