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

Machine Learning Street Talk (MLST)

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Evaluating Adversarial Defense Mechanisms

This chapter explores the complexities and challenges of assessing the performance of defense mechanisms against adversarial examples in machine learning. It highlights the tendency for initial evaluations to be overly optimistic and stresses the need for accurate reporting to prevent confusion in the research community. The discussion addresses the contrasting attitudes toward handling erroneous results across various academic fields and emphasizes fostering a culture of humility and rigor in machine learning research.

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