Tackling the Accuracy-Interpretability Trade-off in a Hierarchy of Machine Learning Models for the Prediction of Extreme Heatwaves
Alessandro Lovo, Amaury Lancelin, Corentin Herbert, Freddy Bouchet

TL;DR
This paper compares a hierarchy of machine learning models for predicting extreme heatwaves in France, balancing accuracy and interpretability to enhance trust and scientific understanding in climate predictions.
Contribution
It introduces a hierarchy of models from simple interpretable to complex deep learning, evaluating their trade-offs in climate extreme event prediction.
Findings
CNNs offer higher accuracy but low interpretability
ScatNet achieves similar accuracy with better transparency
Simpler models can rival complex models in performance
Abstract
When performing predictions that use Machine Learning (ML), we are mainly interested in performance and interpretability. This generates a natural trade-off, where complex models generally have higher skills but are harder to explain and thus trust. Interpretability is particularly important in the climate community, where we aim at gaining a physical understanding of the underlying phenomena. Even more so when the prediction concerns extreme weather events with high impact on society. In this paper, we perform probabilistic forecasts of extreme heatwaves over France, using a hierarchy of increasingly complex ML models, which allows us to find the best compromise between accuracy and interpretability. More precisely, we use models that range from a global Gaussian Approximation (GA) to deep Convolutional Neural Networks (CNNs), with the intermediate steps of a simple Intrinsically…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Meteorological Phenomena and Simulations · Stock Market Forecasting Methods
MethodsScattering Transform
