休眠过程:在多个尺度上模拟移动呼叫

Siyuan Liu, Lei Li, Rammaya Krishnan
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引用次数: 0

摘要

在更大的颗粒中,移动电话的行为模式与在更小的颗粒中相同吗?仅凭一天的观察,我们如何预测整个月的电话分布?人们开发了许多模型来解释大规模的社交图谱。然而,现有的所有模型都集中在一个时间尺度上的图。许多动力学行为要么被忽略,要么在一个尺度上处理。特别是新用户可能随时加入或现有用户退出社交网络。在本文中,我们提出了一种新颖的HiP模型来捕捉纵向行为,以模拟不断发展的社交图的程度分布。我们使用HiP分析了一个大规模的电话数据集,并与文献中的几个模型进行了比较。我们的模型能够在多个尺度上拟合电话分布,在每个尺度上比现有的最佳方法提高30%到75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hibernating Process: Modelling Mobile Calls at Multiple Scales
Do mobile phone calls at larger granularities behave in the same pattern as in smaller ones? How can we forecast the distribution of a whole month's phone calls with only one day's observation? There are many models developed to interpret large scale social graphs. However, all of the existing models focus on graph at one time scale. Many dynamical behaviors were either ignored, or handled at one scale. In particular new users might join or current users quit social networks at any time. In this paper, we propose HiP, a novel model to capture longitudinal behaviors in modeling degree distribution of evolving social graphs. We analyze a large scale phone call dataset using HiP, and compare with several previous models in literature. Our model is able to fit phone call distribution at multiple scales with 30% to 75% improvement over the best existing method on each scale.
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