TY - JOUR
T1 - TF-LLM
T2 - Enhanced time series analysis with time-frequency large language models
AU - Zhang, Yuhang
AU - Yu, Zitong
AU - Dai, Mingtong
AU - Sun, Yue
AU - Tan, Tao
N1 - Publisher Copyright:
© 2026 Elsevier Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
PY - 2026
Y1 - 2026
N2 - In recent years, pre-trained large language models (LLMs) are gradually introduced into time series analysis, and researchers have observed their significant potential for multi-task reasoning, particularly in handling complex symbolic sequences. However, how to effectively and deeply leverage the contextual reasoning capabilities of LLMs in time series data remains a key challenge. To address this challenge, this study proposes the TF-LLM framework to handle various tasks in time series, such as forecasting, classification, imputation, and anomaly detection. We innovatively integrate the strengths of both time and frequency domains: frequency representations simplify data complexity and enhance the capture of global and local periodic patterns, while time modeling addresses fine-grained dependencies, mitigating the effects of non-stationarity. Additionally, to enhance the model’s reasoning capabilities, we introduce prompt learning to enrich the contextual information of inputs and help the LLMs better understand time series data. We conduct extensive multi-task experiments on seven benchmark datasets, covering tasks like forecasting, classification, imputation, and anomaly detection. The results indicate the superior performance of the proposed TF-LLM in handling complex time series tasks, outperforming several existing methods.
AB - In recent years, pre-trained large language models (LLMs) are gradually introduced into time series analysis, and researchers have observed their significant potential for multi-task reasoning, particularly in handling complex symbolic sequences. However, how to effectively and deeply leverage the contextual reasoning capabilities of LLMs in time series data remains a key challenge. To address this challenge, this study proposes the TF-LLM framework to handle various tasks in time series, such as forecasting, classification, imputation, and anomaly detection. We innovatively integrate the strengths of both time and frequency domains: frequency representations simplify data complexity and enhance the capture of global and local periodic patterns, while time modeling addresses fine-grained dependencies, mitigating the effects of non-stationarity. Additionally, to enhance the model’s reasoning capabilities, we introduce prompt learning to enrich the contextual information of inputs and help the LLMs better understand time series data. We conduct extensive multi-task experiments on seven benchmark datasets, covering tasks like forecasting, classification, imputation, and anomaly detection. The results indicate the superior performance of the proposed TF-LLM in handling complex time series tasks, outperforming several existing methods.
KW - Large language model
KW - Time-frequency domain balance
KW - Time-series analysis
UR - https://www.scopus.com/pages/publications/105034546441
U2 - 10.1016/j.neunet.2026.108687
DO - 10.1016/j.neunet.2026.108687
M3 - Article
C2 - 41707482
AN - SCOPUS:105034546441
SN - 0893-6080
VL - 199
JO - Neural Networks
JF - Neural Networks
M1 - 108687
ER -