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Accurate time-series forecasting is crucial in various scientific and industrial domains, yet deep learning models often struggle to capture long-term dependencies and adapt to data distribution shifts over time. We introduce Future-Guided Learning, an approach that enhances time-series event forecasting through a dynamic feedback mechanism inspired by predictive coding. Our method involves two models: a detection model that analyzes future data to identify critical events and a forecasting model that predicts these events based on current data. When discrepancies occur between the forecasting and detection models, a more significant update is applied to the forecasting model, effectively minimizing surprise, allowing the forecasting model to dynamically adjust its parameters. We validate our approach on a variety of tasks, demonstrating a 44.8% increase in AUC-ROC for seizure prediction using EEG data, and a 23.4% reduction in MSE for forecasting in nonlinear dynamical systems (outlier excluded). By incorporating a predictive feedback mechanism, Future-Guided Learning advances how deep learning is applied to time-series forecasting.
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Skye Gunasekaran
University of California, Santa Cruz
Assel Kembay
University of California, Santa Cruz
Hugo Ladret
Friedrich Miescher Institute
SHILAP Revista de lepidopterología
Nature Communications
Centre National de la Recherche Scientifique
The University of Sydney
University of California, Santa Cruz
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Gunasekaran et al. (Tue,) studied this question.
synapsesocial.com/papers/69dbc3cf50e1971baba3c8ee — DOI: https://doi.org/10.1038/s41467-025-63786-4
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