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#52 - Unadversarial Examples (Hadi Salman, MIT)

Machine Learning Street Talk (MLST)

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Enhancing Classifier Robustness through Randomized Smoothing

This chapter discusses the development of methods to enhance classifier performance in the presence of Gaussian noise, focusing on randomized smoothing techniques. The speakers share insights on integrating denoisers with fixed classifiers to improve classification accuracy and discuss the significance of collaboration in their research. They also highlight the importance of clear communication in research, ensuring accessibility and replicability in the machine learning community.

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