Overcoming the Modality Gap in Context-Aided Forecasting
arXiv cs.LG / 3/16/2026
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Key Points
- The paper introduces context-aided forecasting (CAF) and highlights a gap where multimodal models underperform due to poor context quality in existing datasets.
- It presents a semi-synthetic data augmentation method that generates descriptive and verifiably complementary contexts, enabling large-scale CAF-7M dataset creation with a rigorously verified test set.
- The authors show that semi-synthetic pre-training transfers effectively to real-world evaluation and provide evidence that models utilize context.
- They conclude that dataset quality, rather than architectural limitations, is the primary bottleneck in context-aided forecasting.
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