FDALLM: Traffic Data Prediction with Functional Data Analysis and Large Language Models Conference

Sun, Y, Wang, X, Cao, G et al. (2025). FDALLM: Traffic Data Prediction with Functional Data Analysis and Large Language Models . 1169-1174. 10.1109/ICC52391.2025.11161166

cited authors

  • Sun, Y; Wang, X; Cao, G; Mao, S

authors

abstract

  • In communication network management, mobile traffic prediction is vital for ensuring efficient system operation. Despite considerable progresses in applying neural networks for traffic prediction, traditional models often struggle to handle high-dimensional and time-dependent data. This paper addresses these challenges by proposing a novel framework that constructs prompts to enhance the predictive ability of large language models (LLMs) and their understanding of traffic data. Specifically, we leverage functional data analysis (FDA), a superior technique to traditional methods, to preprocess traffic data and extract features. Through extensive experiments on various LLMs with a real-world dataset, we validate the effectiveness and scalability of our proposed method, with performance improvements of up to 23.53% and 21.34% in mean squared error (MSE) and mean absolute error (MAE), respectively. Our results indicate a significant advance in predictive performance, providing a promising approach for future traffic data analysis.

publication date

  • January 1, 2025

Digital Object Identifier (DOI)

start page

  • 1169

end page

  • 1174