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Towards Interpretable and Trustworthy Time Series Reasoning: A BlueSky Vision

19 October 2025
Kanghui Ning
Zijie Pan
Yushan Jiang
Anderson Schneider
Yuriy Nevmyvaka
Dongjin Song
    AI4TS
ArXiv (abs)PDFHTML
Main:2 Pages
1 Figures
Appendix:4 Pages
Abstract

Time series reasoning is emerging as the next frontier in temporal analysis, aiming to move beyond pattern recognition towards explicit, interpretable, and trustworthy inference. This paper presents a BlueSky vision built on two complementary directions. One builds robust foundations for time series reasoning, centered on comprehensive temporal understanding, structured multi-step reasoning, and faithful evaluation frameworks. The other advances system-level reasoning, moving beyond language-only explanations by incorporating multi-agent collaboration, multi-modal context, and retrieval-augmented approaches. Together, these directions outline a flexible and extensible framework for advancing time series reasoning, aiming to deliver interpretable and trustworthy temporal intelligence across diverse domains.

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