1. Decoding Time Series with LLMs: A Multi-Agent Framework for Cross-Domain Annotation
- Author
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Lin, Minhua, Chen, Zhengzhang, Liu, Yanchi, Zhao, Xujiang, Wu, Zongyu, Wang, Junxiang, Zhang, Xiang, Wang, Suhang, and Chen, Haifeng
- Subjects
Computer Science - Artificial Intelligence ,Computer Science - Computation and Language - Abstract
Time series data is ubiquitous across various domains, including manufacturing, finance, and healthcare. High-quality annotations are essential for effectively understanding time series and facilitating downstream tasks; however, obtaining such annotations is challenging, particularly in mission-critical domains. In this paper, we propose TESSA, a multi-agent system designed to automatically generate both general and domain-specific annotations for time series data. TESSA introduces two agents: a general annotation agent and a domain-specific annotation agent. The general agent captures common patterns and knowledge across multiple source domains, leveraging both time-series-wise and text-wise features to generate general annotations. Meanwhile, the domain-specific agent utilizes limited annotations from the target domain to learn domain-specific terminology and generate targeted annotations. Extensive experiments on multiple synthetic and real-world datasets demonstrate that TESSA effectively generates high-quality annotations, outperforming existing methods., Comment: 23 pages, 9 figures, 24 tables
- Published
- 2024