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#92 - SARA HOOKER - Fairness, Interpretability, Language Models

Machine Learning Street Talk (MLST)

CHAPTER

Navigating Fairness in Machine Learning

This chapter explores the dynamic and evolving nature of fairness in machine learning, addressing the key challenges researchers face, such as data labeling and cultural perceptions. It highlights the complexities of human annotator bias and the implications of model size and training objectives on fairness outcomes. The discussion also emphasizes the transition from traditional interpretability to incorporating fairness objectives directly in model training.

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