Signature Kernel Scoring Rule as Spatio-Temporal Diagnostic for Probabilistic Forecasting
- URL: http://arxiv.org/abs/2510.19110v1
- Date: Tue, 21 Oct 2025 22:15:20 GMT
- Title: Signature Kernel Scoring Rule as Spatio-Temporal Diagnostic for Probabilistic Forecasting
- Authors: Archer Dodson, Ritabrata Dutta,
- Abstract summary: We introduce the signature kernel scoring rule, which reframes weather variables as continuous paths to encode temporal and spatial dependencies.<n> Empirical evaluations through weather scorecards on WeatherBench 2 models demonstrate the signature kernel scoring rule's high discriminative power.<n>We train sliding window generative neural networks using a predictive-sequential scoring rule on ERA5 reanalysis weather data.
- Score: 3.4161707164978137
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Modern weather forecasting has increasingly transitioned from numerical weather prediction (NWP) to data-driven machine learning forecasting techniques. While these new models produce probabilistic forecasts to quantify uncertainty, their training and evaluation may remain hindered by conventional scoring rules, primarily MSE, which ignore the highly correlated data structures present in weather and atmospheric systems. This work introduces the signature kernel scoring rule, grounded in rough path theory, which reframes weather variables as continuous paths to encode temporal and spatial dependencies through iterated integrals. Validated as strictly proper through the use of path augmentations to guarantee uniqueness, the signature kernel provides a theoretically robust metric for forecast verification and model training. Empirical evaluations through weather scorecards on WeatherBench 2 models demonstrate the signature kernel scoring rule's high discriminative power and unique capacity to capture path-dependent interactions. Following previous demonstration of successful adversarial-free probabilistic training, we train sliding window generative neural networks using a predictive-sequential scoring rule on ERA5 reanalysis weather data. Using a lightweight model, we demonstrate that signature kernel based training outperforms climatology for forecast paths of up to fifteen timesteps.
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