Forecasting for Network Management with Joint Statistical Modelling and Machine Learning

Leonardo Lo Schiavo, M. Fiore, M. Gramaglia, A. Banchs, X. Costa
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引用次数: 3

Abstract

Forecasting is a task of ever increasing importance for the operation of mobile networks, where it supports anticipatory decisions by network intelligence and enables emerging zero-touch service and network management models. While current trends in forecasting for anticipatory networking lean towards the systematic adoption of models that are purely based on deep learning approaches, we pave the way for a different strategy to the design of predictors for mobile network environments. Specifically, following recent advances in time series prediction, we consider a hybrid approach that blends statistical modelling and machine learning by means of a joint training process of the two methods. By tailoring this mixed forecasting engine to the specific requirements of network traffic demands, we develop a Thresholded Exponential Smoothing and Recurrent Neural Network (TES-RNN) model. We experiment with TES-RNN in two practical network management use cases, i.e., (i) anticipatory allocation of network resources, and (ii) mobile traffic anomaly prediction. Results obtained with extensive traffic workloads collected in an operational mobile network show that TES-RNN can yield substantial performance gains over current state-of-the-art predictors in both applications considered.
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基于联合统计建模和机器学习的网络管理预测
对于移动网络的运营来说,预测是一项日益重要的任务,它支持网络智能的预期决策,并使新兴的零接触服务和网络管理模型成为可能。虽然目前预测网络的趋势倾向于系统地采用纯粹基于深度学习方法的模型,但我们为设计移动网络环境预测器的不同策略铺平了道路。具体来说,随着时间序列预测的最新进展,我们考虑了一种混合方法,通过两种方法的联合训练过程将统计建模和机器学习混合在一起。通过将这种混合预测引擎定制为网络流量需求的特定要求,我们开发了阈值指数平滑和循环神经网络(TES-RNN)模型。我们在两个实际的网络管理用例中实验了TES-RNN,即(i)网络资源的预期分配,以及(ii)移动流量异常预测。在运营移动网络中收集的大量流量工作负载所获得的结果表明,在考虑的两种应用中,TES-RNN可以比当前最先进的预测器产生显著的性能提升。
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