Flow-based Conformal Prediction for Multi-dimensional Time Series

arXiv stat.ML / 3/23/2026

💬 OpinionIdeas & Deep AnalysisModels & Research

Key Points

  • The paper proposes a flow-based conformal prediction method for multi-dimensional time series that uses classifier-free guidance to leverage correlations in observations and non-conformity scores, addressing the exchangeability limitation.
  • It provides theoretical guarantees including exact non-asymptotic marginal coverage and a finite-sample bound on conditional coverage for the proposed method.
  • Empirical evaluations on real-world time series demonstrate significantly smaller prediction sets than existing conformal prediction approaches while preserving the target coverage.
  • The approach extends conformal prediction to multi-dimensional outputs, enabling more reliable uncertainty quantification in complex forecasting tasks.

Abstract

Time series prediction underpins a broad range of downstream tasks across many scientific domains. Recent advances and increasing adoption of black-box machine learning models for time series prediction highlight the critical need for uncertainty quantification. While conformal prediction has gained attention as a reliable uncertainty quantification method, conformal prediction for time series faces two key challenges: (1) \textbf{leveraging correlations in observations and non-conformity scores to overcome the exchangeability assumption}, and (2) \textbf{constructing prediction sets for multi-dimensional outcomes}. To address these challenges, we propose a novel conformal prediction method for time series using flow with classifier-free guidance. We provide coverage guarantees by establishing exact non-asymptotic marginal coverage and a finite-sample bound on conditional coverage for the proposed method. Evaluations on real-world time series datasets demonstrate that our method constructs significantly smaller prediction sets than existing conformal prediction methods, maintaining target coverage.