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Detecting and Coloring Anomalies in Real Cellular Network Using Principle Component Analysis

机译:基于主成分分析的真实蜂窝网络中的异常检测和着色

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Anomaly detection in a communication network is a powerful tool for predicting faults, detecting network sabotage attempts and learning user profiles for marketing purposes and quality of services improvements. In this article, we convert the unsupervised data mining learning problem into a supervised classification problem. We will propose three methods for creating an associative anomaly within a given commercial traffic data database and demonstrate how, using the Principle Component Analysis (PCA) algorithm, we can detect the network anomaly behavior and classify between a regular data stream and a data stream that deviates from a routine, at the IP network layer level. Although the PCA method was used in the past for the task of anomaly detection, there are very few examples where such tasks were performed on real traffic data that was collected and shared by a commercial company. The article presents three interesting innovations: The first one is the use of an up-to-date database produced by the users of an international communications company. The dataset for the data mining algorithm retrieved from a data center which monitors and collects low-level network transportation log streams from all over the world. The second innovation is the ability to enable the labeling of several types of anomalies, from untagged datasets, by organizing and prearranging the database. The third innovation is the abilities, not only to detect the anomaly but also, to coloring the anomaly type. I.e., identification, classification and labeling some forms of the abnormality.
机译:通信网络中的异常检测是一种功能强大的工具,可用于预测故障,检测网络破坏企图并学习用户资料以用于营销目的和改善服务质量。在本文中,我们将无监督的数据挖掘学习问题转换为有监督的分类问题。我们将提出三种在给定的商业流量数据数据库中创建关联异常的方法,并展示如何使用主成分分析(PCA)算法检测网络异常行为并在常规数据流和在IP网络层级别上偏离常规。尽管过去曾经使用PCA方法来执行异常检测任务,但很少有示例对由商业公司收集和共享的实际流量数据执行此类任务。本文介绍了三个有趣的创新:第一个是使用由国际通信公司的用户生成的最新数据库。从数据中心检索的数据挖掘算法的数据集,该数据中心监视和收集来自世界各地的低级网络传输日志流。第二项创新是能够通过组织和安排数据库来标记未标记数据集中的几种类型的异常。第三个创新是不仅能够检测异常,而且能够对异常类型进行着色。即,识别,分类和标记某些形式的异常。

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