Inference of social network behavior from Internet traffic traces

Mostfa Albdair, R. Addie, D. Fatseas
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引用次数: 1

Abstract

All network traffic is a byproduct of social networking. In this paper, Anonymized Internet (IP) Trace Datasets obtained from the Center for Applied Internet Data Analysis (CAIDA) has been used to identify and estimate characteristics of the underlying social network from the overall traffic. The analysis methods used here fall into two groups, the first being based on frequency analysis and second method being based on the use of traffic matrices, with the later analysis method being further sub-divided into groups based on the traffic mean, variance and covariance. The frequency analysis of origin (O), destination (D) and O-D Pair statistics exhibit heavy tailed behavior. Because the large number of IP addresses contained in the CAIDA Datasets, only the most predominate IP Addresses are used when estimating all three sub-divided groups of traffic matrices. Principal Component Analysis (PCA) and related methods are applied to identify key features of each type of traffic matrix. A new system called Antraff has been developed to carry out all the analysis procedures.
从网络流量轨迹推断社会网络行为
所有的网络流量都是社交网络的副产品。本文使用来自应用互联网数据分析中心(CAIDA)的匿名互联网(IP)跟踪数据集,从总体流量中识别和估计底层社交网络的特征。这里使用的分析方法分为两组,第一组是基于频率分析的方法,第二组是基于使用流量矩阵的方法,后一组分析方法根据流量均值、方差和协方差进一步细分为两组。起源(O)、目的地(D)和O-D对统计的频率分析表现出重尾行为。由于CAIDA数据集中包含大量IP地址,因此在估计所有三个细分的流量矩阵组时,只使用最主要的IP地址。应用主成分分析(PCA)及其相关方法识别各类流量矩阵的关键特征。一种名为Antraff的新系统已经开发出来,可以执行所有的分析程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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