TTrees: Automated Classification of Causes of Network Anomalies with Little Data

Mohamed Moulay, R. G. Leiva, V. Mancuso, Pablo J. Rojo Maroni, Antonio Fernández
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引用次数: 4

Abstract

Leveraging machine learning (ML) for the detection of network problems dates back to handling call-dropping issues in telephony. However, troubleshooting cellular networks is still a manual task, assigned to experts who monitor the network around the clock. We present here TTrees (from Troubleshooting Trees), a practical and interpretable ML software tool that implements a methodology we have designed to automate the identification of the causes of performance anomalies in a cellular network. This methodology is unsupervised and combines multiple ML algorithms (e.g., decision trees and clustering). TTrees requires small volumes of data and is quick at training.Our experiments using real data from operational commercial mobile networks show that TTrees can automatically identify and accurately classify network anomalies—e.g., cases for which a network low performance is not apparently justified by op-erational conditions—training with just a few hundreds of data samples, hence enabling precise troubleshooting actions.
TTrees:基于小数据的网络异常原因自动分类
利用机器学习(ML)来检测网络问题可以追溯到处理电话中的掉线问题。然而,蜂窝网络故障排除仍然是一项手工任务,需要分配给全天候监控网络的专家。我们在这里介绍TTrees(来自故障排除树),这是一个实用且可解释的ML软件工具,它实现了我们设计的一种方法,用于自动识别蜂窝网络中性能异常的原因。这种方法是无监督的,结合了多种机器学习算法(例如,决策树和聚类)。TTrees需要的数据量小,训练速度快。我们使用实际商用移动网络的真实数据进行的实验表明,TTrees可以自动识别和准确分类网络异常,例如:在这种情况下,网络性能较低显然不能通过操作条件来证明——仅使用几百个数据样本进行训练,从而实现精确的故障排除操作。
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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