JointFM-0.1: A Foundation Model for Multi-Target Joint Distributional Prediction
arXiv cs.LG / 3/24/2026
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Key Points
- The report proposes JointFM-0.1, a foundation model aimed at distributional forecasting for coupled (multi-target) time series under uncertainty.
- Instead of fitting stochastic differential equations (SDEs) to data, JointFM trains by generating an infinite stream of synthetic SDEs and learning to predict future joint probability distributions directly.
- The approach is presented as zero-shot, avoiding task-specific calibration or fine-tuning typically required for SDE-based modeling pipelines.
- In experiments on unseen synthetic SDEs, JointFM is reported to reduce energy loss by 14.2% versus the strongest baseline while recovering “oracle” joint distributions.
- The work reframes the role of SDEs from an explicit modeling target to a synthetic data generator for learning a general distribution predictor.
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