Root cause analysis of network fault based on random forest

Li Liu, Ke Zhang, Linjun Liu, Le Zhang, Jun Zhang
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Abstract

Artificial intelligence (AI) has become an important means of network anomaly detection and fault root cause analysis (RCA), but most applications are only for a certain segment of the network. In the process of our research on the end-to-end experience analysis of mobile Internet services, we have summarized a set of network end-to-end root cause analysis methods, mainly using non-orthogonal random forest modeling method, AI-based dynamic threshold adjustment and indicator feature extraction, classification modeling and cross-validation of the poor quality of the entire network and the poor quality of the cells. This method has been verified in practice in the production network. The results of root cause analysis are consistent with the actual situation of the production network up to 96%. Practice has proved that this method has played a positive role in supporting the network operation, and greatly improved the production efficiency.
基于随机森林的网络故障根本原因分析
人工智能(AI)已成为网络异常检测和故障根本原因分析(RCA)的重要手段,但大多数应用仅针对某一网络段。在对移动互联网服务端到端体验分析的研究过程中,我们总结了一套网络端到端根本原因分析方法,主要采用非正交随机森林建模方法、基于ai的动态阈值调整和指标特征提取、对整个网络质量差和小区质量差进行分类建模和交叉验证。该方法在实际生产网络中得到了验证。根本原因分析结果与生产网络实际情况的符合率高达96%。实践证明,该方法对网络运营起到了积极的支持作用,大大提高了生产效率。
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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