Oct. 26, 2022, 6:39 p.m. | Patrick Altmeyer

Towards Data Science - Medium towardsdatascience.com

Conformal Prediction in Julia

Part 1 — Introduction

Figure 1: Prediction sets for two different samples and changing coverage rates. As coverage grows, so does the size of the prediction sets. Image by author.

A first crucial step towards building trustworthy AI systems is to be transparent about predictive uncertainty. Model parameters are random variables and their values are estimated from noisy data. That inherent stochasticity feeds through to model predictions and should to be addressed, at the very …

conformal-prediction editors pick julia machine learning prediction

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