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Auteurs principaux: Liu, Penghang, Fons, Elizabeth, Vapsi, Annita, Ghassemi, Mohsen, Vyetrenko, Svitlana, Borrajo, Daniel, Potluru, Vamsi K., Veloso, Manuela
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2510.07432
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author Liu, Penghang
Fons, Elizabeth
Vapsi, Annita
Ghassemi, Mohsen
Vyetrenko, Svitlana
Borrajo, Daniel
Potluru, Vamsi K.
Veloso, Manuela
author_facet Liu, Penghang
Fons, Elizabeth
Vapsi, Annita
Ghassemi, Mohsen
Vyetrenko, Svitlana
Borrajo, Daniel
Potluru, Vamsi K.
Veloso, Manuela
contents Large language models (LLMs) exhibit strong symbolic and compositional reasoning, yet they struggle with time series question answering as the data is typically transformed into an LLM-compatible modality, e.g., serialized text, plotted images, or compressed time series embeddings. Such conversions impose representation bottlenecks, often require cross-modal alignment or finetuning, and can exacerbate hallucination and knowledge leakage. To address these limitations, we propose TS-Agent, an agentic, tool-grounded framework that uses LLMs strictly for iterative evidence-based reasoning, while delegating statistical and structural extraction to time series analytical tools operating on raw sequences. Our framework solves time series tasks through an evidence-driven agentic process: (1) it alternates between thinking, tool execution, and observation in a ReAct-style loop, (2) records intermediate results in an explicit evidence log and corrects the reasoning trace via a self-refinement critic, and (3) enforces a final answer-verification step to prevent hallucinations and leakage. Across four benchmarks spanning time series understanding and reasoning, TS-Agent matches or exceeds strong text-based, vision-based, and time-series language model baselines, with the largest gains on reasoning tasks where multimodal LLMs are prone to hallucination and knowledge leakage in zero-shot settings.
format Preprint
id arxiv_https___arxiv_org_abs_2510_07432
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TS-Agent: Understanding and Reasoning Over Raw Time Series via Iterative Insight Gathering
Liu, Penghang
Fons, Elizabeth
Vapsi, Annita
Ghassemi, Mohsen
Vyetrenko, Svitlana
Borrajo, Daniel
Potluru, Vamsi K.
Veloso, Manuela
Artificial Intelligence
Large language models (LLMs) exhibit strong symbolic and compositional reasoning, yet they struggle with time series question answering as the data is typically transformed into an LLM-compatible modality, e.g., serialized text, plotted images, or compressed time series embeddings. Such conversions impose representation bottlenecks, often require cross-modal alignment or finetuning, and can exacerbate hallucination and knowledge leakage. To address these limitations, we propose TS-Agent, an agentic, tool-grounded framework that uses LLMs strictly for iterative evidence-based reasoning, while delegating statistical and structural extraction to time series analytical tools operating on raw sequences. Our framework solves time series tasks through an evidence-driven agentic process: (1) it alternates between thinking, tool execution, and observation in a ReAct-style loop, (2) records intermediate results in an explicit evidence log and corrects the reasoning trace via a self-refinement critic, and (3) enforces a final answer-verification step to prevent hallucinations and leakage. Across four benchmarks spanning time series understanding and reasoning, TS-Agent matches or exceeds strong text-based, vision-based, and time-series language model baselines, with the largest gains on reasoning tasks where multimodal LLMs are prone to hallucination and knowledge leakage in zero-shot settings.
title TS-Agent: Understanding and Reasoning Over Raw Time Series via Iterative Insight Gathering
topic Artificial Intelligence
url https://arxiv.org/abs/2510.07432