Ensemble Conformalized Quantile Regression for Probabilistic Time Series Forecasting
Permanent lenke
https://hdl.handle.net/10037/27276Dato
2022-11-04Type
Journal articleTidsskriftartikkel
Sammendrag
This article presents a novel probabilistic forecasting method called ensemble conformalized quantile regression (EnCQR). EnCQR constructs distribution-free and approximately marginally valid prediction intervals (PIs), which are suitable for nonstationary and heteroscedastic time series data. EnCQR can be applied on top of a generic forecasting model, including deep learning architectures. EnCQR exploits a bootstrap ensemble estimator, which enables the use of conformal predictors for time series by removing the requirement of data exchangeability. The ensemble learners are implemented as generic machine learning algorithms performing quantile regression (QR), which allow the length of the PIs to adapt to local variability in the data. In the experiments, we predict time series characterized by a different amount of heteroscedasticity. The results demonstrate that EnCQR outperforms models based only on QR or conformal prediction (CP), and it provides sharper, more informative, and valid PIs.
Forlag
IEEESitering
Jensen, Bianchi, Anfinsen. Ensemble Conformalized Quantile Regression for Probabilistic Time Series Forecasting. IEEE Transactions on Neural Networks and Learning Systems. 2022Metadata
Vis full innførselSamlinger
Copyright 2022 The Author(s)