Improving Open-world Continual Learning under the Constraints of Scarce Labeled Data
Yujie Li, Xiangkun Wang, Xin Yang, Marcello Bonsangue, Junbo Zhang, Tianrui Li

TL;DR
This paper introduces a novel framework for open-world continual learning with scarce labeled data, effectively handling unbounded tasks, open detection, and knowledge transfer, outperforming existing methods.
Contribution
It proposes an integrated OFCL framework with instance-wise token augmentation, margin-based open boundary, and adaptive knowledge space for effective learning with limited annotations.
Findings
Outperforms baseline methods significantly.
Effective open detection with limited labeled data.
Enables knowledge transfer from unknowns to knowns.
Abstract
Open-world continual learning (OWCL) adapts to sequential tasks with open samples, learning knowledge incrementally while preventing forgetting. However, existing OWCL still requires a large amount of labeled data for training, which is often impractical in real-world applications. Given that new categories/entities typically come with limited annotations and are in small quantities, a more realistic situation is OWCL with scarce labeled data, i.e., few-shot training samples. Hence, this paper investigates the problem of open-world few-shot continual learning (OFCL), challenging in (i) learning unbounded tasks without forgetting previous knowledge and avoiding overfitting, (ii) constructing compact decision boundaries for open detection with limited labeled data, and (iii) transferring knowledge about knowns and unknowns and even update the unknowns to knowns once the labels of open…
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