蜘蛛:深度学习驱动的稀疏移动流量测量收集与重建

Yin Fang, A. Diallo, Chaoyun Zhang, P. Patras
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引用次数: 1

摘要

数据驱动的移动网络管理依赖于精确的流量测量,这通常需要昂贵的专用设备和大量的本地存储能力,并承担很高的数据传输开销。为了克服这些挑战,在本文中,我们提出了Spider,这是一个深度学习驱动的移动流量测量收集和重建框架,它降低了数据收集的成本,同时在以精细地理粒度推断移动流量消耗方面保持了最先进的准确性。Spider利用强化学习和处理大型动作空间来训练策略网络,该网络有选择地对应该收集数据的最小数量的单元进行采样。我们进一步引入了一种快速准确的神经模型,该模型从历史数据中提取时空相关性,以基于稀疏测量重建全网流量消耗。我们对真实世界的移动流量数据集进行的实验表明,与考虑的几个基准相比,Spider的样本单元减少了48%,并且比最先进的插值方法的重建误差降低了67%。此外,我们的框架可以适应以前看不见的流量模式。
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Spider: Deep Learning-driven Sparse Mobile Traffic Measurement Collection and Reconstruction
Data-driven mobile network management hinges on accurate traffic measurements, which routinely require expensive specialized equipment and substantial local storage capabilities, and bear high data transfer overheads. To overcome these challenges, in this paper we propose Spider, a deep-learning-driven mobile traffic measurement collection and reconstruction framework, which reduces the cost of data collection while retaining state-of-the-art accuracy in inferring mobile traffic consumption with fine geographic granularity. Spider harnesses Reinforcement Learning and tackles large action spaces to train a policy network that selectively samples a minimal number of cells where data should be collected. We further introduce a fast and accurate neural model that extracts spatiotemporal correlations from historical data to reconstruct network-wide traffic consumption based on sparse measurements. Experiments we conduct with a real-world mobile traffic dataset demonstrate that Spider samples 48% fewer cells as compared to several benchmarks considered, and yields up to 67% lower reconstruction errors than state-of-the-art interpolation methods. Moreover, our framework can adapt to previously unseen traffic patterns.
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