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Position: What Can Large Language Models Tell Us about Time Series Analysis (2402.02713v2)

Published 5 Feb 2024 in cs.LG and cs.AI

Abstract: Time series analysis is essential for comprehending the complexities inherent in various realworld systems and applications. Although LLMs have recently made significant strides, the development of artificial general intelligence (AGI) equipped with time series analysis capabilities remains in its nascent phase. Most existing time series models heavily rely on domain knowledge and extensive model tuning, predominantly focusing on prediction tasks. In this paper, we argue that current LLMs have the potential to revolutionize time series analysis, thereby promoting efficient decision-making and advancing towards a more universal form of time series analytical intelligence. Such advancement could unlock a wide range of possibilities, including time series modality switching and question answering. We encourage researchers and practitioners to recognize the potential of LLMs in advancing time series analysis and emphasize the need for trust in these related efforts. Furthermore, we detail the seamless integration of time series analysis with existing LLM technologies and outline promising avenues for future research.

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Authors (9)
  1. Ming Jin (130 papers)
  2. Yifan Zhang (245 papers)
  3. Wei Chen (1288 papers)
  4. Kexin Zhang (52 papers)
  5. Yuxuan Liang (126 papers)
  6. Bin Yang (320 papers)
  7. Jindong Wang (150 papers)
  8. Shirui Pan (197 papers)
  9. Qingsong Wen (139 papers)
Citations (6)