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

U-STS-LLM A Unified Spatio-Temporal Steered Large Language Model for Traffic Prediction and Imputation

About

The efficient operation of modern cellular networks hinges on the accurate analysis of spatio-temporal traffic data. Mastering these patterns is essential for core network functions, chiefly forecasting future load to pre-empt congestion and imputing missing values caused by sensor failures or transmission errors to ensure data continuity. While deeply connected, forecasting and imputation have historically evolved as separate sub-fields. The dominant paradigm, Spatio-Temporal Graph Neural Networks (STGNNs), while effective, are often specialized, computationally intensive, and exhibit limited generalization. Concurrently, adapting large pre-trained language models (LLMs) offers a powerful alternative for sequence modeling, yet existing approaches provide weak structural guidance, leading to unstable convergence and a narrow focus on forecasting. To bridge these gaps, we propose U-STS-LLM, a unified framework built on a spatio-temporally steered LLM. Our core innovation is a Dynamic Spatio-Temporal Attention Bias Generator that synthesizes a persistent functional graph with transient nodal states to explicitly steer the LLM's attention. Coupled with a partially frozen backbone tuned via Low-Rank Adaptation (LoRA) and a Gated Adaptive Fusion mechanism, the model achieves stable, parameter-efficient adaptation. Trained under a unified multi-task objective, U-STS-LLM learns a holistic data representation. Extensive experiments on real-world cellular datasets demonstrate that U-STS-LLM establishes new state-of-the-art performance in both long-horizon forecasting and high-missing-rate imputation, while maintaining remarkable training efficiency and stability, offering a novel blueprint for harnessing foundation models in structured, non-linguistic domains.

Yichen Zhang, Jun Li• 2026

Related benchmarks

TaskDatasetResultRank
Traffic PredictionTrentino SMS IN
MAE0.1373
24
Traffic PredictionTrentino INTERNET
MAE0.2352
20
ImputationMilan telecommunications SMS-IN
MAE0.0672
13
ImputationMilan telecommunications SMS-OUT
MAE0.0967
13
ImputationMilan telecommunications CALL-IN
MAE0.0738
13
ImputationMilan telecommunications INTERNET
MAE0.0898
13
Spatio-temporal ImputationTrentino SMS-OUT
MAE0.1487
13
Spatio-temporal ImputationTrentino CALL-IN
MAE0.1493
13
Spatio-temporal ImputationTrentino CALL-OUT
MAE0.1665
13
Spatio-temporal ImputationTrentino INTERNET
MAE0.1647
13
Showing 10 of 19 rows

Other info

Follow for update