Toward Better Generalization in Few-Shot Learning through the Meta-Component Combination
arXiv:2511.11632v1 Announce Type: new Abstract: In few-shot learning, classifiers are expected to generalize to unseen classes given only a small number of instances of each new class. One of the popular solutions to few-shot learning is metric-based meta-learning. However, it…
