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From Images to Signals: Are Large Vision Models Useful for Time Series Analysis?

From Images to Signals: Are Large Vision Models Useful for Time Series Analysis?

来源:Arxiv_logoArxiv
英文摘要

Transformer-based models have gained increasing attention in time series research, driving interest in Large Language Models (LLMs) and foundation models for time series analysis. As the field moves toward multi-modality, Large Vision Models (LVMs) are emerging as a promising direction. In the past, the effectiveness of Transformer and LLMs in time series has been debated. When it comes to LVMs, a similar question arises: are LVMs truely useful for time series analysis? To address it, we design and conduct the first principled study involving 4 LVMs, 8 imaging methods, 18 datasets and 26 baselines across both high-level (classification) and low-level (forecasting) tasks, with extensive ablation analysis. Our findings indicate LVMs are indeed useful for time series classification but face challenges in forecasting. Although effective, the contemporary best LVM forecasters are limited to specific types of LVMs and imaging methods, exhibit a bias toward forecasting periods, and have limited ability to utilize long look-back windows. We hope our findings could serve as a cornerstone for future research on LVM- and multimodal-based solutions to different time series tasks.

Hanghang Tong、Dongjin Song、Zhigang Deng、Qingsong Wen、Jingchao Ni、ChengAo Shen、Ziming Zhao

计算技术、计算机技术

Hanghang Tong,Dongjin Song,Zhigang Deng,Qingsong Wen,Jingchao Ni,ChengAo Shen,Ziming Zhao.From Images to Signals: Are Large Vision Models Useful for Time Series Analysis?[EB/OL].(2025-07-09)[2025-07-16].https://arxiv.org/abs/2505.24030.点此复制

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