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引用次数: 0
摘要
我们提出了一个初步的分析移动数据收集从一个操作GPRS网络。输入的数据是时间序列,计算在一个完整的星期内,在等间隔的瞬间(5分钟),在126个样本路线区域中的每个区域中存在的移动站的数量。时间序列是从2004年10月通过被动监测Mobilkom Austria AG & Co KG网络的Gb链路子集捕获的数据包级跟踪中提取的。我们将主成分分析(PCA)应用于该数据集。PCA提供了一种简单的方法,将路由区域分为两大类,住宅和商业区域,以及一些“非典型”区域。此外,我们还解决了PCA对输入数据中临时局部间隙的鲁棒性问题
Principal Component Analysis of Mobility Data from an Operational GPRS Network
We present a preliminary analysis of mobility data collected from an operational GPRS network. The input data are time-series counting the number of mobile stations present in each of 126 sample routing areas at equally spaced instants (5 min) during one full week. The time-series were extracted from packet-level traces captured by passively monitoring a subset of the Gb links of the network of Mobilkom Austria AG & Co KG during October 2004. We apply the principal component analysis (PCA) to this dataset. The PCA offers a simple method for classifying the routing areas into two main groups, residential and business areas, plus a few "atypical" ones. Additionally, we address the problem of robustness of the PCA to temporary local gaps in the input data