Ensemble-size-dependence of deep-learning post-processing methods that minimize an (un)fair score: motivating examples and a proof-of-concept solution
Christopher David Roberts

TL;DR
This paper investigates how ensemble size affects fair scoring methods in deep-learning post-processing, demonstrating issues with dependency structures and proposing a transformer-based solution that maintains reliability across different ensemble sizes.
Contribution
It introduces trajectory transformers that ensure ensemble-size independence in fair score minimization, improving reliability in deep-learning ensemble post-processing.
Findings
Transformer-based method maintains reliability across ensemble sizes.
Deep-learning post-processing can introduce bias and unreliability.
Trajectory transformers reduce systematic biases in forecasts.
Abstract
Fair scores reward ensemble forecast members that behave like samples from the same distribution as the verifying observations. They are therefore an attractive choice as loss functions to train data-driven ensemble forecasts or post-processing methods when large training ensembles are either unavailable or computationally prohibitive. The adjusted continuous ranked probability score (aCRPS) is fair and unbiased with respect to ensemble size, provided forecast members are exchangeable and interpretable as conditionally independent draws from an underlying predictive distribution. However, distribution-aware post-processing methods that introduce structural dependency between members can violate this assumption, rendering aCRPS unfair. We demonstrate this effect using two approaches designed to minimize the expected aCRPS of a finite ensemble: (1) a linear member-by-member calibration,…
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Taxonomy
TopicsForecasting Techniques and Applications · Meteorological Phenomena and Simulations · Climate variability and models
