Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Training-Free Time Series Classification via In-Context Reasoning with LLM Agents

About

Time series classification (TSC) spans diverse application scenarios, yet labeled data are often scarce, making task-specific training costly and inflexible. Recent reasoning-oriented large language models (LLMs) show promise in understanding temporal patterns, but purely zero-shot usage remains suboptimal. We propose FETA, a multi-agent framework for training-free TSC via exemplar-based in-context reasoning. FETA decomposes a multivariate series into channel-wise subproblems, retrieves a few structurally similar labeled examples for each channel, and leverages a reasoning LLM to compare the query against these exemplars, producing channel-level labels with self-assessed confidences; a confidence-weighted aggregator then fuses all channel decisions. This design eliminates the need for pretraining or fine-tuning, improves efficiency by pruning irrelevant channels and controlling input length, and enhances interpretability through exemplar grounding and confidence estimation. On nine challenging UEA datasets, FETA achieves strong accuracy under a fully training-free setting, surpassing multiple trained baselines. These results demonstrate that a multi-agent in-context reasoning framework can transform LLMs into competitive, plug-and-play TSC solvers without any parameter training. The code is available at https://github.com/SongyuanSui/FETATSC.

Songyuan Sui, Zihang Xu, Xia Hu• 2025

Related benchmarks

TaskDatasetResultRank
Time-series classificationSelfRegulationSCP2
Accuracy56.7
148
Time-series classificationEthanolConcentration
Accuracy38
63
Multivariate Time Series ClassificationMotorImagery
Accuracy52
41
Multivariate Time Series ClassificationHandMovementDirection
Accuracy37.8
36
Multivariate Time Series ClassificationStandWalkJump
Accuracy60
35
Time-series classificationEigenWorms
Accuracy61.1
23
Time-series classificationAtrialFibrillation
Accuracy46.7
13
Time-series classificationERing
Accuracy24.4
13
Time-series classificationFingerMovements
Accuracy58
13
Showing 9 of 9 rows

Other info

Follow for update