基于混合树模型的无线网络故障定位根源分析

Web Intell. Pub Date : 2022-06-01 DOI:10.3233/web-220016
Bin Chen, Li Yu, Weiyi Luo, Chizhong Wu, Manyu Li, Hai Tan, Jiajin Huang, Z. Wan
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引用次数: 1

摘要

定位网络故障的根本原因对网络运维至关重要。如果能准确地找出根本原因,就能节省运营费用。然而,由于无线环境和网络架构的复杂性,对网络故障进行准确的根本原因定位存在数据缺失、故障行为混杂、缺乏良好标记数据等困难。本研究通过构建全局特征和局部特征,对数据样本进行新的特征表示,可以突出根本原因分析数据的时间特征和上下文信息。提出了一种由CatBoost、XGBoost和LightGBM集成的混合树模型(HTM),从多个角度解释混合故障行为,并区分不同的根本原因。基于全局特征和局部特征的结合,采用半监督训练策略对HTM进行训练,以处理缺乏良好标记的数据。在ICASSP 2022 AIOps挑战赛的真实数据集上进行了实验,结果表明,与其他模型相比,基于全局和局部特征的HTM模型性能最好。同时,我们的解决方案在比赛排行榜中获得了第三名,显示了模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid tree model for root cause analysis of wireless network fault localization
Localizing the root cause of network faults is crucial to network operation and maintenance. Operational expenses will be saved if the root cause can be identified accurately. However, due to the complicated wireless environments and network architectures, accurate root cause localization of network falut meets the difficulties including missing data, hybrid fault behaviors, and short of well-labeled data. In this study, global and local features are constructed to make new feature representation for data sample, which can highlight the temporal characteristics and contextual information of the root cause analysis data. A hybrid tree model (HTM) ensembled by CatBoost, XGBoost and LightGBM is proposed to interpret the hybrid fault behaviors from several perspectives and discriminate different root causes. Based on the combination of global and local features, a semi-supervised training strategy is utilized to train the HTM for dealing with short of well-labeled data. The experiments are conducted on the real-world dataset from ICASSP 2022 AIOps Challenge, and the results show that the global and local feature based HTM achieves the best model performance comparing with other models. Meanwhile, our solution achieves third place in the competition leaderboard which shows the model effectiveness.
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