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Cellular Traffic Prediction and Classification: A Comparative Evaluation of LSTM and ARIMA

机译:蜂窝流量预测和分类:LSTM和ARIMA的比较评估

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Prediction of user traffic in cellular networks has attracted profound attention for improving the reliability and efficiency of network resource utilization. In this paper, we study the problem of cellular network traffic prediction and classification by employing standard machine learning and statistical learning time series prediction methods, including long short-term memory (LSTM) and autoregressive integrated moving average (ARIMA), respectively. We present an extensive experimental evaluation of the designed tools over a real network traffic dataset. Within this analysis, we explore the impact of different parameters on the effectiveness of the predictions. We further extend our analysis to the problem of network traffic classification and prediction of traffic bursts. The results, on the one hand, demonstrate the superior performance of LSTM over ARIMA in general, especially when the length of the training dataset is large enough and its granularity is fine enough. On the other hand, the results shed light onto the circumstances in which, ARIMA performs close to the optimal with lower complexity.
机译:蜂窝网络中用户业务量的预测已为提高网络资源利用的可靠性和效率引起了广泛的关注。在本文中,我们通过采用标准的机器学习和统计学习时间序列预测方法(分别包括长短期记忆(LSTM)和自回归综合移动平均值(ARIMA))来研究蜂窝网络流量的预测和分类问题。我们在真实的网络流量数据集上对设计工具进行了广泛的实验评估。在此分析中,我们探索了不同参数对预测有效性的影响。我们进一步将分析扩展到网络流量分类和流量突发预测的问题。一方面,结果证明了LSTM通常比ARIMA具有优越的性能,尤其是当训练数据集的长度足够大且粒度足够精细时。另一方面,该结果说明了ARIMA在较低的复杂度下表现接近最佳的情况。

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