As firm as their foundations: can open-sourced foundation models be used to create adversarial examples for downstream tasks?
Foundation models pre-trained on web-scale vision-language data, such as CLIP, are widely used as cornerstones of powerful machine learning systems. While pre-training offers clear advantages for downstream learning, it also endows downstream models with shared adversarial vulnerabilities that can b...
Asıl Yazarlar: | Hu, A, Gu, J, Pinto, F, Kamnitsas, K, Torr, P |
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Materyal Türü: | Internet publication |
Dil: | English |
Baskı/Yayın Bilgisi: |
2024
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