CLAILGJun 20, 2025

When Does Multimodality Lead to Better Time Series Forecasting?

Amazon
arXiv:2506.21611v26 citationsh-index: 38
Originality Incremental advance
AI Analysis

This study provides a rigorous foundation for understanding multimodal forecasting benefits, addressing a critical gap for researchers and practitioners in fields like health and economics, though it is incremental in synthesizing existing paradigms.

The paper systematically investigates when incorporating textual information improves time series forecasting, finding that gains are condition-dependent and not universal across 16 tasks, with key factors including model capacity and data characteristics.

Recently, there has been growing interest in incorporating textual information into foundation models for time series forecasting. However, it remains unclear whether and under what conditions such multimodal integration consistently yields gains. We systematically investigate these questions across a diverse benchmark of 16 forecasting tasks spanning 7 domains, including health, environment, and economics. We evaluate two popular multimodal forecasting paradigms: aligning-based methods, which align time series and text representations; and prompting-based methods, which directly prompt large language models for forecasting. Our findings reveal that the benefits of multimodality are highly condition-dependent. While we confirm reported gains in some settings, these improvements are not universal across datasets or models. To move beyond empirical observations, we disentangle the effects of model architectural properties and data characteristics, drawing data-agnostic insights that generalize across domains. Our findings highlight that on the modeling side, incorporating text information is most helpful given (1) high-capacity text models, (2) comparatively weaker time series models, and (3) appropriate aligning strategies. On the data side, performance gains are more likely when (4) sufficient training data is available and (5) the text offers complementary predictive signal beyond what is already captured from the time series alone. Our study offers a rigorous, quantitative foundation for understanding when multimodality can be expected to aid forecasting tasks, and reveals that its benefits are neither universal nor always aligned with intuition.

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