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Main Authors: Li, Wei, Xie, Zhe, Liang, Yuxuan, Hao, Xinli, Cheng, Yunyao, Pei, Dan, Meng, Xiaofeng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.11512
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author Li, Wei
Xie, Zhe
Liang, Yuxuan
Hao, Xinli
Cheng, Yunyao
Pei, Dan
Meng, Xiaofeng
author_facet Li, Wei
Xie, Zhe
Liang, Yuxuan
Hao, Xinli
Cheng, Yunyao
Pei, Dan
Meng, Xiaofeng
contents Recently, Large Language Models (LLMs) have introduced a novel paradigm in Time Series Analysis (TSA), leveraging strong language capabilities to support tasks such as forecasting and anomaly detection. However, these analysis tasks cannot adequately cover temporal language tasks, such as interpretation and captioning. A fundamental gap remains between TSA and LLMs: LLMs are pre-trained to optimize natural language relevance for question answering rather than objectives specialized for TSA. To bridge this gap, TSA is evolving toward Time Series Question Answering (TSQA), shifting from expert-driven and task-specific analysis to user-driven and task-unified question answering. TSQA depends on flexible exploration rather than predefined TSA pipelines. In this survey, we first propose a taxonomy that reflects the evolution from TSA to TSQA, driven by a shift from external to internal alignment. We then organize existing literature into three alignment paradigms: Injective Alignment, Bridging Alignment, and Internal Alignment, and provide practical guidance for flexible, economical, and generalizable selection of alignment paradigms. We finally analyze datasets across domains and characteristics, identify challenges, and highlight future research directions.
format Preprint
id arxiv_https___arxiv_org_abs_2506_11512
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle From Time Series Analysis to Question Answering: A Survey in the LLM Era
Li, Wei
Xie, Zhe
Liang, Yuxuan
Hao, Xinli
Cheng, Yunyao
Pei, Dan
Meng, Xiaofeng
Machine Learning
Artificial Intelligence
Recently, Large Language Models (LLMs) have introduced a novel paradigm in Time Series Analysis (TSA), leveraging strong language capabilities to support tasks such as forecasting and anomaly detection. However, these analysis tasks cannot adequately cover temporal language tasks, such as interpretation and captioning. A fundamental gap remains between TSA and LLMs: LLMs are pre-trained to optimize natural language relevance for question answering rather than objectives specialized for TSA. To bridge this gap, TSA is evolving toward Time Series Question Answering (TSQA), shifting from expert-driven and task-specific analysis to user-driven and task-unified question answering. TSQA depends on flexible exploration rather than predefined TSA pipelines. In this survey, we first propose a taxonomy that reflects the evolution from TSA to TSQA, driven by a shift from external to internal alignment. We then organize existing literature into three alignment paradigms: Injective Alignment, Bridging Alignment, and Internal Alignment, and provide practical guidance for flexible, economical, and generalizable selection of alignment paradigms. We finally analyze datasets across domains and characteristics, identify challenges, and highlight future research directions.
title From Time Series Analysis to Question Answering: A Survey in the LLM Era
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2506.11512