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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.

Abstract

Context-aided forecasting (CAF) holds promise for integrating domain knowledge and forward-looking information, enabling AI systems to surpass traditional statistical methods. However, recent empirical studies reveal a puzzling gap: multimodal models often fail to outperform their unimodal counterparts. We hypothesize that this underperformance stems from poor context quality in existing datasets, as verification is challenging. To address these limitations, we introduce a semi-synthetic data augmentation method that generates contexts both descriptive of temporal dynamics and verifiably complementary to numerical histories. This approach enables massive-scale dataset creation, resulting in CAF-7M, a corpus of 7 million context-augmented time series windows, including a rigorously verified test set. We demonstrate that semi-synthetic pre-training transfers effectively to real-world evaluation, and show clear evidence of context utilization. Our results suggest that dataset quality, rather than architectural limitations, has been the primary bottleneck in context-aided forecasting.