Conformal Prediction for Hierarchical Data

22 Jan 2025 (modified: 18 Jun 2025)Submitted to ICML 2025EveryoneRevisionsBibTeXCC BY 4.0
TL;DR: We combine conformal prediction (for multivariate data) and hierarchical regression
Abstract: We consider conformal prediction of multivariate data series, which consists of outputting prediction regions based on empirical quantiles of point-estimate errors. We actually consider hierarchical multivariate data series, for which some components are linear combinations of others. The intuition is that the hierarchical structure may be leveraged to improve the prediction regions in terms of their sizes for given coverage levels. We implement this intuition by including a projection step (also called reconciliation step) in the split conformal prediction [SCP] procedure and prove that the resulting prediction regions are indeed globally smaller than without the projection step. The associated strategies and their analyses rely both on the SCP literature and on the one of forecast reconciliation. We also illustrate the theoretical findings, both on artificial and on real data.
Primary Area: Probabilistic Methods->Everything Else
Keywords: Conformal prediction, hierarchical data, forecast reconciliation
Submission Number: 6676
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