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Unlocking Compositional Generalization in Continual Few-Shot Learning

About

Object-centric representations promise a key property for few-shot learning: Rather than treating a scene as a single unit, a model can decompose it into individual object-level parts that can be matched and compared across different concepts. In practice, this potential is rarely realized. Continual learners either collapse scenes into global embeddings, or train with part-level matching objectives that tie representations too closely to seen patterns, leaving them unable to generalize to truly novel concepts. In this paper, we identify this fundamental structural conflict and pioneer a new paradigm that strictly decouples representation learning from compositional inference. Leveraging the inherent patch-level semantic geometry of self-supervised Vision Transformers (ViTs), our framework employs a dual-phase strategy. During training, slot representations are optimized entirely toward holistic class identity, preserving highly generalizable, object-level geometries. At inference, preserved slots are dynamically composed to match novel scenes. We demonstrate that this paradigm offers dual structural benefits: The frozen backbone naturally prevents representation drift, while our lightweight, holistic optimization preserves the features' capacity for novel-concept transfer. Extensive experiments validate this approach, achieving state-of-the-art unseen-concept generalization and minimal forgetting across standard continual learning benchmarks.

Phu-Quy Nguyen-Lam, Phu-Hoa Pham, Dao Sy Duy Minh, Chi-Nguyen Tran, Huynh Trung Kiet, Long Tran-Thanh• 2026

Related benchmarks

TaskDatasetResultRank
Few-Shot Class-Incremental LearningminiImageNet (test)--
173
Few-Shot Class-Incremental LearningCUB200 (test)--
92
Class-incremental learningCIFAR-100 10T
Avg Accuracy (A_T)86.52
40
Compositional Few-Shot TransferCGQA 10-way 10-shot
NOC94.14
9
Continual Few-Shot LearningCGQA (test)
Sys Score92.4
9
Continual Few-Shot LearningCOBJ (test)
SYS Score81.64
9
Class-incremental learningImageNet-A 10 sessions, 20-way
AT Accuracy70.31
5
Class-incremental learningImageNet-R 10 sessions, 20-way
Task Accuracy (AT)82.3
5
Few-Shot Class-Incremental LearningCIFAR-100 60 base + 8 sessions (test)
Average Accuracy (AA)84.02
3
Continual LearningCGQA T=10 sessions
AA83.38
3
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