SOTAVerified

Trustworthy Prediction with Gaussian Process Knowledge Scores

2025-06-23Code Available0· sign in to hype

Kurt Butler, Guanchao Feng, Tong Chen, Petar Djuric

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Probabilistic models are often used to make predictions in regions of the data space where no observations are available, but it is not always clear whether such predictions are well-informed by previously seen data. In this paper, we propose a knowledge score for predictions from Gaussian process regression (GPR) models that quantifies the extent to which observing data have reduced our uncertainty about a prediction. The knowledge score is interpretable and naturally bounded between 0 and 1. We demonstrate in several experiments that the knowledge score can anticipate when predictions from a GPR model are accurate, and that this anticipation improves performance in tasks such as anomaly detection, extrapolation, and missing data imputation. Source code for this project is available online at https://github.com/KurtButler/GP-knowledge.

Tasks

Reproductions