Feifei Shi
Paper download is intended for registered attendees only, and is
subjected to the IEEE Copyright Policy. Any other use is strongly forbidden.
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.