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#040 - Adversarial Examples (Dr. Nicholas Carlini, Dr. Wieland Brendel, Florian Tramèr)

Machine Learning Street Talk (MLST)

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Exploring Implicit Bias in CNNs

This chapter investigates the implicit bias present in CNN architectures, particularly the preference for learning high frequency features. It discusses attempts to adjust these networks towards low frequency features and the challenges in enhancing adversarial robustness, emphasizing the complexities of inductive biases in machine learning.

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