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Ryan Tibshirani: Statistics, Nonparametric Regression, Conformal Prediction

The Gradient: Perspectives on AI

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Exploring Challenges and Innovations in Conformal Prediction Theory

The chapter delves into challenges with exchangeability assumptions in statistical modeling, discussing the limitations in real-world scenarios and a recent paper on conformal prediction beyond exchangeability. It contrasts online and batch scenarios for adapting to distribution shifts, explains methods like weighted calibration points, and details approaches for achieving accurate prediction sets over time. The discussion also covers future research directions in conformal prediction, focusing on practical integration and overcoming assumptions.

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