Conformal Prediction: A Theoretical Note and Benchmarking Transductive Node Classification in Graphs
Abstract
Conformal prediction has become increasingly popular for quantifying the uncertainty associated with machine learning models. Recent work in graph uncertainty quantification has built upon this approach for conformal graph prediction. The nascent nature of these explorations has led to conflicting choices for implementations, baselines, and method evaluation. In this work, we analyze the design choices made in the literature and discuss the tradeoffs associated with existing methods. Building on the existing implementations, we introduce techniques to scale existing methods to large-scale graph datasets without sacrificing performance. Our theoretical and empirical results justify our recommendations for future scholarship in graph conformal prediction.
Cite
@article{arxiv.2409.18332,
title = {Conformal Prediction: A Theoretical Note and Benchmarking Transductive Node Classification in Graphs},
author = {Pranav Maneriker and Aditya T. Vadlamani and Anutam Srinivasan and Yuntian He and Ali Payani and Srinivasan Parthasarathy},
journal= {arXiv preprint arXiv:2409.18332},
year = {2025}
}
Comments
TMLR 2025 Camera Ready Version