English

UniCast: A Unified Framework for Instance-Conditioned Multimodal Time-Series Forecasting

Artificial Intelligence 2026-03-10 v2

Abstract

Time series forecasting underpins applications in finance, healthcare, and environmental monitoring. Despite the success of Time Series Foundation Models (TSFMs), existing approaches operate in a unimodal setting and rely on static prompts or fixed fusion schemes, limiting their ability to exploit multimodal context and adapt to instance-level variation. We propose UniCast, a parameter-efficient multimodal framework that extends TSFMs through instance conditioned prompting and dynamic modality routing. UniCast infers a conditional prompt from time series, vision, and text inputs via a Transformer-based contextual distiller, enabling input-specific adaptation without updating the forecasting backbone. To regulate how auxiliary modalities influence predictions, UniCast employs Modality Routing, a cross-attention mechanism that estimates modality relevance given the current temporal state and selectively amplifies informative signals while suppressing noise. Integrated with a frozen TSFM via soft prompt tuning, UniCast preserves foundation-level generalization while enabling effective multimodal control. Extensive experiments across diverse forecasting benchmarks show that UniCast consistently outperforms all existing TSFM baselines, demonstrating that instance-conditioned multimodal control is critical for next-generation time series forecasting.

Keywords

Cite

@article{arxiv.2508.11954,
  title  = {UniCast: A Unified Framework for Instance-Conditioned Multimodal Time-Series Forecasting},
  author = {Sehyuk Park and Soyeon Caren Han and Eduard Hovy},
  journal= {arXiv preprint arXiv:2508.11954},
  year   = {2026}
}
R2 v1 2026-07-01T04:52:54.866Z