大都市蜂窝通信的时空分析与预测

Xu Wang, Zimu Zhou, Zheng Yang, Yunhao Liu, Chunyi Peng
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引用次数: 104

摘要

大规模和细粒度地理解和预测蜂窝流量对移动用户、无线运营商和城市当局都是有益的和有价值的。由于不同的用户互联网行为和城市范围内频繁的用户移动带来了巨大的时空动态,因此预测现代大都市的蜂窝流量尤其具有挑战性。在本文中,我们通过覆盖中国一个主要城市的150万用户和5929个手机信号塔的大型手机使用数据集,描述并调查了手机流量中这种动态的根本原因。我们揭示了密集的时空依赖关系,甚至在遥远的蜂窝塔之间,这在以前的作品中很大程度上被忽视了。为了明确表征和有效建模城市元胞交通的时空依赖性,我们提出了一种新的元胞内和元胞间数据交通分解方法,并应用基于图的深度学习方法进行精确的元胞交通预测。实验结果表明,我们的方法始终优于最先进的基于时间序列的方法,我们还通过一个示例研究展示了如何将蜂窝流量分解用于事件推理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-temporal analysis and prediction of cellular traffic in metropolis
Understanding and predicting cellular traffic at large-scale and fine-granularity is beneficial and valuable to mobile users, wireless carriers and city authorities. Predicting cellular traffic in modern metropolis is particularly challenging because of the tremendous temporal and spatial dynamics introduced by diverse user Internet behaviours and frequent user mobility citywide. In this paper, we characterize and investigate the root causes of such dynamics in cellular traffic through a big cellular usage dataset covering 1.5 million users and 5,929 cell towers in a major city of China. We reveal intensive spatio-temporal dependency even among distant cell towers, which is largely overlooked in previous works. To explicitly characterize and effectively model the spatio-temporal dependency of urban cellular traffic, we propose a novel decomposition of in-cell and inter-cell data traffic, and apply a graph-based deep learning approach to accurate cellular traffic prediction. Experimental results demonstrate that our method consistently outperforms the state-of-the-art time-series based approaches and we also show through an example study how the decomposition of cellular traffic can be used for event inference.
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