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Adversarial Examples and Data Modelling - Andrew Ilyas (MIT)

Machine Learning Street Talk (MLST)

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Addressing Biases in Data Collection

This chapter explores the critical implications of biases in data collection within the predictive pipeline, focusing on case studies such as the ImageNet dataset. It further introduces a novel algorithm to address self-selection bias and discusses the complexities of modeling within machine learning contexts.

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