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ICICLE: Interpretable Class Incremental Continual Learning

About

Continual learning enables incremental learning of new tasks without forgetting those previously learned, resulting in positive knowledge transfer that can enhance performance on both new and old tasks. However, continual learning poses new challenges for interpretability, as the rationale behind model predictions may change over time, leading to interpretability concept drift. We address this problem by proposing Interpretable Class-InCremental LEarning (ICICLE), an exemplar-free approach that adopts a prototypical part-based approach. It consists of three crucial novelties: interpretability regularization that distills previously learned concepts while preserving user-friendly positive reasoning; proximity-based prototype initialization strategy dedicated to the fine-grained setting; and task-recency bias compensation devoted to prototypical parts. Our experimental results demonstrate that ICICLE reduces the interpretability concept drift and outperforms the existing exemplar-free methods of common class-incremental learning when applied to concept-based models.

Dawid Rymarczyk, Joost van de Weijer, Bartosz Zieli\'nski, Bart{\l}omiej Twardowski• 2023

Related benchmarks

TaskDatasetResultRank
Class-incremental learningCUB200 10 Tasks
FN (Final Acc)60.2
59
Task-Incremental LearningCUB 4 tasks
Final Avg Acc65.4
14
Task-Incremental LearningCUB 20 tasks
Final Average Accuracy49.7
7
Class-incremental learningCUB 20 tasks
Final Avg Accuracy9.9
7
Task-Incremental LearningStanford Cars--
6
Class-incremental learningStanford Cars
Accuracy (4 Tasks)33.5
5
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