LGAIOct 20, 2024

UoMo: A Universal Model of Mobile Traffic Forecasting for Wireless Network Optimization

arXiv:2410.15322v44 citationsh-index: 13KDD
Originality Incremental advance
AI Analysis

This addresses the need for a generalizable model to support network planning and optimization across different urban environments, though it is incremental as it builds on existing foundation model concepts.

The authors tackled the problem of mobile traffic forecasting for wireless network optimization by proposing a universal foundation model that outperforms existing models across diverse forecasting tasks and zero/few-shot learning on 9 real-world datasets.

Mobile traffic forecasting allows operators to anticipate network dynamics and performance in advance, offering substantial potential for enhancing service quality and improving user experience. However, existing models are often task-oriented and are trained with tailored data, which limits their effectiveness in diverse mobile network tasks of Base Station (BS) deployment, resource allocation, energy optimization, etc. and hinders generalization across different urban environments. Foundation models have made remarkable strides across various domains of NLP and CV due to their multi-tasking adaption and zero/few-shot learning capabilities. In this paper, we propose an innovative Foundation model for Mo}bile traffic forecasting (FoMo), aiming to handle diverse forecasting tasks of short/long-term predictions and distribution generation across multiple cities to support network planning and optimization. FoMo combines diffusion models and transformers, where various spatio-temporal masks are proposed to enable FoMo to learn intrinsic features of different tasks, and a contrastive learning strategy is developed to capture the correlations between mobile traffic and urban contexts, thereby improving its transfer learning capability. Extensive experiments on 9 real-world datasets demonstrate that FoMo outperforms current models concerning diverse forecasting tasks and zero/few-shot learning, showcasing a strong universality.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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