Applying Machine Learning to LTE Traffic Prediction: Comparison of Bagging, Random Forest, and SVM

Nikolai Stepanov, D. Alekseeva, A. Ometov, E. Lohan
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引用次数: 16

Abstract

Today, a significant share of smartphone applications use Artificial Intelligence (AI) elements that, in turn, are based on Machine Learning (ML) principles. Particularly, ML is also applied to the Edge paradigm aiming to predict and optimize the network load conventionally caused by human-based traffic, which is growing each year rapidly. The application of both standard and deep ML techniques is expected to improve the networks’ operation in the most complex heterogeneous environment. In this work, we propose a method to predict the LTE network edge traffic by utilizing various ML techniques. The analysis is based on the public cellular traffic dataset, and it presents a comparison of the quality metrics. The Support Vector Machines method allows much faster training than the Bagging and Random Forest that operate well with a mixture of numerical and categorical features.
将机器学习应用于LTE流量预测:Bagging, Random Forest和SVM的比较
如今,很大一部分智能手机应用程序使用人工智能(AI)元素,而这些元素又基于机器学习(ML)原则。特别是,机器学习也应用于边缘范式,旨在预测和优化每年快速增长的基于人为的流量通常引起的网络负载。标准和深度机器学习技术的应用有望改善网络在最复杂的异构环境中的运行。在这项工作中,我们提出了一种利用各种机器学习技术预测LTE网络边缘流量的方法。该分析基于公共蜂窝流量数据集,并给出了质量指标的比较。与Bagging和Random Forest相比,支持向量机方法的训练速度要快得多,后者可以很好地处理数字和分类特征的混合。
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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