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pintervals: an R package for model-agnostic prediction intervals

Published: January 7, 2026 | arXiv ID: 2601.03994v1

By: David Randahl, Anders Hjort, Jonathan P. Williams

Potential Business Impact:

Makes computer predictions more trustworthy and reliable.

Business Areas:
Predictive Analytics Artificial Intelligence, Data and Analytics, Software

The \pkg{pintervals} package aims to provide a unified framework for constructing prediction intervals and calibrating predictions in a model-agnostic setting using set-aside calibration data. It comprises routines to construct conformal as well as parametric and bootstrapped prediction intervals from any model that outputs point predictions. Several R packages and functions already exist for constructing prediction intervals, but they often focus on specific modeling frameworks or types of predictions, or require manual customization for different models or applications. By providing a consistent interface for a variety of prediction interval construction approaches (all model-agnostic), \pkg{pintervals} allows researchers to apply and compare them across different modeling frameworks and applications.

Page Count
27 pages

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