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Quantifying Uncertainty in Machine Learning Models
This chapter discusses the need for models to be better at uncertainty quantification and how it plays a role in decision making. It explores different use cases for estimating uncertainties in machine learning models, explains the concepts of epistemic and alliotoric uncertainty, and highlights the challenges of estimating uncertainties. Additionally, it delves into techniques such as conformal prediction and training deep networks to output uncertainty values.