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Distributional conformal prediction

About

We propose a robust method for constructing conditionally valid prediction intervals based on models for conditional distributions such as quantile and distribution regression. Our approach can be applied to important prediction problems including cross-sectional prediction, k-step-ahead forecasts, synthetic controls and counterfactual prediction, and individual treatment effects prediction. Our method exploits the probability integral transform and relies on permuting estimated ranks. Unlike regression residuals, ranks are independent of the predictors, allowing us to construct conditionally valid prediction intervals under heteroskedasticity. We establish approximate conditional validity under consistent estimation and provide approximate unconditional validity under model misspecification, overfitting, and with time series data. We also propose a simple "shape" adjustment of our baseline method that yields optimal prediction intervals.

Victor Chernozhukov, Kaspar W\"uthrich, Yinchu Zhu• 2019

Related benchmarks

TaskDatasetResultRank
Conformal Predictionmeps 21 (test)
Average Length531
18
Conformal PredictionBio (test)
Marginal Coverage90
14
Conformal Predictionfb1 (test)
Marginal Coverage90
14
Conformal Predictionfb2 (test)
Marginal Coverage90
14
Conformal Predictionmeps19 (test)
Marginal Coverage90
14
Conformal Predictionblog (test)
Marginal Coverage0.9
14
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