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Adversarial Examples and Data Modelling - Andrew Ilyas (MIT)

Machine Learning Street Talk (MLST)

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Exploring Data Attribution and Model Reasoning

This chapter investigates experiments with the MIT Ftrace dataset, examining various data attribution methods and the successful performance of an information retrieval system. The discussion spans the depth of model learning, differentiating between robust and non-robust features, and questions the reasoning capabilities of neural networks. Additionally, it addresses the contrasts between academics and industry in computational resources, emphasizing the need for principled research approaches in machine learning.

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