Resolution-Aware Retrieval Augmented Zero-Shot Forecasting
- URL: http://arxiv.org/abs/2510.16695v1
- Date: Sun, 19 Oct 2025 03:29:57 GMT
- Title: Resolution-Aware Retrieval Augmented Zero-Shot Forecasting
- Authors: Iman Deznabi, Peeyush Kumar, Madalina Fiterau,
- Abstract summary: Zero-shot forecasting aims to predict outcomes for previously unseen conditions without direct historical data.<n>We introduce a Resolution-Aware Retrieval-Augmented Forecasting model that enhances predictive accuracy by leveraging spatial correlations and temporal frequency characteristics.<n>Our results highlight the effectiveness of retrieval-augmented and resolution-aware strategies, offering a scalable and data-efficient solution for zero-shot forecasting in microclimate modeling and beyond.
- Score: 3.827130678851168
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Zero-shot forecasting aims to predict outcomes for previously unseen conditions without direct historical data, posing a significant challenge for traditional forecasting methods. We introduce a Resolution-Aware Retrieval-Augmented Forecasting model that enhances predictive accuracy by leveraging spatial correlations and temporal frequency characteristics. By decomposing signals into different frequency components, our model employs resolution-aware retrieval, where lower-frequency components rely on broader spatial context, while higher-frequency components focus on local influences. This allows the model to dynamically retrieve relevant data and adapt to new locations with minimal historical context. Applied to microclimate forecasting, our model significantly outperforms traditional forecasting methods, numerical weather prediction models, and modern foundation time series models, achieving 71% lower MSE than HRRR and 34% lower MSE than Chronos on the ERA5 dataset. Our results highlight the effectiveness of retrieval-augmented and resolution-aware strategies, offering a scalable and data-efficient solution for zero-shot forecasting in microclimate modeling and beyond.
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