A Tutorial on Conformal Prediction
tically independent. This allows us to interpret “being right 95% of the time” in an unusually direct way. In §2.1, we illustrate this point with a well-worn example, normally distributed random vari-ables. In §2.2, we contrast confidence with full-fledged …
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