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#52 - Unadversarial Examples (Hadi Salman, MIT)

Machine Learning Street Talk (MLST)

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Unraveling Adversarial Perturbations

This chapter explores the significance of adversarial perturbations in machine learning, highlighting how small changes can drastically alter an image's prediction. The discussion encompasses the process of adversarial training to enhance model robustness, as well as the development of un-adversarial examples designed for better recognition by neural networks. Featuring a guest with diverse expertise, the chapter also examines the challenges and innovative solutions related to adversarial examples, underlining their potential benefits for model performance.

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