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#52 - Unadversarial Examples (Hadi Salman, MIT)

Machine Learning Street Talk (MLST)

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Robustness and Accuracy in Transfer Learning

This chapter examines the intricate balance between robustness and accuracy in machine learning models, particularly regarding their effectiveness in transfer learning tasks. It highlights recent research findings, proposing that enhancing model robustness may improve transfer learning outcomes, even if it means sacrificing some accuracy. The discussion also tackles the philosophical implications of robust versus non-robust features and their impact on model performance across different tasks.

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