Meta-Learning with Parameter Scaling for Cross-Domain Few-Shot Classification on GLUE under Adversarial Attacks
Abstract
Abstract: Meta-learning model can quickly adapt to new tasks using few-shot labeled data. However, despite achieving good generalization on few-shot classification tasks, it is still challenging to improve the adversarial robustness of the meta-learning model in few-shot learning. Although adversarial training (AT) methods such as Adversarial Query (AQ) can improve the adversarially robust performance of meta-learning models, AT is still computationally expensive training. On the other hand, meta-learning models trained with AT will drop significant accuracy on the original clean images. This paper prop
Research Question
To what extent does meta-learning with parameter scaling improve cross-domain generalization of few-shot classifiers on the GLUE benchmark under adversarial attacks?
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| Evidence strength | MEDIUM | |
| Citation grounding | MEDIUM | |
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| Reproducibility status | HIGH |
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Provenance
| Publisher | Assignee Research |
| Public provenance | L4, External archival record |
| Report artifact | Available |
| External record | Registered |
| Claim lineage | 6 aggregate source-grounded claims |
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