LGCVMar 14, 2025

How Can Time Series Analysis Benefit From Multiple Modalities? A Survey and Outlook

arXiv:2503.11835v424 citationsh-index: 17Has Code
Originality Synthesis-oriented
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It addresses the isolation of time series analysis compared to other modalities, offering a foundational resource for researchers in data mining and AI, though it is incremental as a survey.

This survey tackles the problem of how time series analysis can benefit from multiple modalities by reviewing the emerging field of MM4TSA, identifying three key benefits such as reusing foundation models and cross-modality interaction, and providing a comprehensive outlook with future opportunities.

Time series analysis (TSA) is a longstanding research topic in the data mining community and has wide real-world significance. Compared to "richer" modalities such as language and vision, which have recently experienced explosive development and are densely connected, the time-series modality remains relatively underexplored and isolated. We notice that many recent TSA works have formed a new research field, i.e., Multiple Modalities for TSA (MM4TSA). In general, these MM4TSA works follow a common motivation: how TSA can benefit from multiple modalities. This survey is the first to offer a comprehensive review and a detailed outlook for this emerging field. Specifically, we systematically discuss three benefits: (1) reusing foundation models of other modalities for efficient TSA, (2) multimodal extension for enhanced TSA, and (3) cross-modality interaction for advanced TSA. We further group the works by the introduced modality type, including text, images, audio, tables, and others, within each perspective. Finally, we identify the gaps with future opportunities, including the reused modalities selections, heterogeneous modality combinations, and unseen tasks generalizations, corresponding to the three benefits. We release an up-to-date GitHub repository that includes key papers and resources.

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