Contextual Gradient Scaling for Few-Shot Learning

Citations

WEB OF SCIENCE

4
Citations

SCOPUS

9

초록

Model-agnostic meta-learning (MAML) is a well-known optimization-based meta-learning algorithm that works well in various computer vision tasks, e.g., few-shot classification. MAML is to learn an initialization so that a model can adapt to a new task in a few steps. However, since the gradient norm of a classifier (head) is much bigger than those of backbone layers, the model focuses on learning the decision boundary of the classifier with similar representations. Furthermore, gradient norms of high-level layers are small than those of the other layers. So, the backbone of MAML usually learns task-generic features, which results in deteriorated adaptation performance in the inner-loop. To resolve or mitigate this problem, we propose contextual gradient scaling (CxGrad), which scales gradient norms of the backbone to facilitate learning task-specific knowledge in the inner-loop. Since the scaling factors are generated from task-conditioned parameters, gradient norms of the backbone can be scaled in a task-wise fashion. Experimental results show that CxGrad effectively encourages the backbone to learn task-specific knowledge in the inner-loop and improves the performance of MAML up to a significant margin in both same- and cross-domain few-shot classification.

키워드

Deep Learning Deep LearningEfficient Training and Inference Methods for Networks
제목
Contextual Gradient Scaling for Few-Shot Learning
저자
Lee, SanghyukLee, SeunghyunSong, Byung Cheol
DOI
10.1109/WACV51458.2022.00356
발행일
2022
유형
Proceedings Paper
저널명
IEEE/CVF Winter Conference on Applications of Computer Vision (WACV)
페이지
3503 ~ 3512