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Crowdsourcing based large-scale network anomaly detection

机译:基于众包的大规模网络异常检测

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In recent years, emerging smartphones have proliferated fast growth of Over The Top (OTT) services and rapid expansion of mobile networks. However, the underlying network structure is trouble-prone due to massive integrated Internet Service Providers (ISP). Traditional approaches to maintain the network performance cannot satisfy requirements under such a large-scale network. As a result, a low cost and highly efficient anomaly detection mechanism is still unavailable. In this paper we propose a data mining framework to extract network anomalies from crowdsourced network measuring dataset. We first explore the crowdsourced dataset by feature engineering and instance clustering. On the basis of the preprocessed dataset, we propose weighted-apriori rule mining to find out the association between high RTTs and other features thus localizing the network anomaly. We conduct extensive experiments based on a large-scale crowdsourced network dataset with five million samples. The dataset involves round trip time (RTT) information from 6226 kinds of applications and more than 5000 users. Experiments show that our approaches can effectively detect anomalous network conditions.
机译:近年来,新兴的智能手机激增了Over The Top(OTT)服务的快速增长和移动网络的快速扩展。但是,由于大规模的集成Internet服务提供商(ISP),基础网络结构容易出现故障。在这种大规模网络下,传统的维持网络性能的方法无法满足要求。结果,仍然缺乏低成本和高效的异常检测机制。在本文中,我们提出了一种数据挖掘框架,用于从众包网络测量数据集中提取网络异常。我们首先通过特征工程和实例聚类探索众包数据集。在预处理数据集的基础上,我们提出了加权先验规则挖掘,以找出高RTT与其他特征之间的关联,从而定位网络异常。我们基于具有500万个样本的大规模众包网络数据集进行了广泛的实验。该数据集包含来自6226种应用程序和5000多个用户的往返时间(RTT)信息。实验表明,我们的方法可以有效地检测网络异常情况。

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