网络流量预测使用分位数回归与线性,树,和深度学习模型

Ahmed Alutaibi, S. Ganti
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引用次数: 2

摘要

近年来,机器学习研究取得了巨大进展。机器学习的主要前沿领域是预测和数据建模。在这项工作中,我们评估了一个精挑细选的预测模型在预测日间总网络流量方面的适用性。我们选择了最适合多变量特征空间的模型。它们代表线性、决策树和神经网络模型。多年来,预测网络流量一直依赖于预测点值。这种方法没有足够的描述性,并且天真地给出了关于数据的肤浅结论。我们建议使用分位数损失函数来预测边界或预测区间。我们的研究结果表明,线性模型与它们的简单性相比表现良好,而长短期记忆神经网络在所有实验中都取得了最好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Traffic Prediction using Quantile Regression with linear, Tree, and Deep Learning Models
Machine Learning research has progressed tremendously in recent years. Major fields that machine learning pushed its frontier were prediction and data modeling. In this work we evaluate the applicability of a handpicked prediction models on predicting inter-day aggregate network traffic. We chose models that work best with multi-variate feature space. They represent linear, decision trees, and neural network models. Over the years, predicting network traffic has resorted to predicting point values. This approach is not descriptive enough and naively gives a shallow conclusion about the data. We propose using a quantile loss function that predicts boundaries or prediction intervals. Our results show that linear models fared well compared to their simplicity while Long Short-Term Memory Neural Networks gave best results across all experiments.
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