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Anomaly prediction in mobile networks : A data driven approach for machine learning algorithm selection

机译:移动网络中的异常预测:一种数据驱动的机器学习算法选择方法

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In this paper, we propose a model for proactive anomaly detection in mobile networks. We show that when Key Performance Indicators (KPIs) are highly correlated, the linear regression gives a good accuracy in anomaly detection for a short prediction horizon. When the prediction horizon is far, KPIs become weakly correlated. We propose to transform discrete measurements into functional data and apply a functional data regression method to perform the prediction. We compare pro-posed models using KPI measurements obtained from a real Long Term Evolution (LTE) network. We show that an improvement in prediction performance can be obtained by using functional data analysis.
机译:在本文中,我们提出了一种用于移动网络中主动异常检测的模型。我们显示,当关键绩效指标(KPI)高度相关时,线性回归可以在较短的预测范围内在异常检测中提供良好的准确性。当预测范围很远时,KPI的相关性就会变弱。我们建议将离散量度转换为功能数据,并应用功能数据回归方法来执行预测。我们使用从真正的长期演进(LTE)网络获得的KPI度量比较提议的模型。我们表明,可以通过使用功能数据分析来提高预测性能。

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