Evaluating TCP Throughput Predictability from Packet Traces using Recurrent Neural Network

Ryu Kazama, H. Abe, Chunghan Lee
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Abstract

Congestion control algorithms using recurrent neural network (RNN) for bandwidth prediction are expected to improve throughput. Previous studies involving performance evaluations were conducted only using simulated data. However, simulation and real-world environments are largely different and rarely provide equivalent prediction accuracy. Therefore, we will verify whether our proposed method provides better prediction accuracy in a real-world environment. We measured communications in a real environment and generated training data by converting packet captured data with measurement of prediction accuracy on the generated data. The results showed that the maximum percentage of correct responses was 79.71%, which was comparable to the results obtained using simulated data.
利用递归神经网络从数据包轨迹评估TCP吞吐量可预测性
使用递归神经网络(RNN)进行带宽预测的拥塞控制算法有望提高吞吐量。以往涉及绩效评估的研究仅使用模拟数据进行。然而,模拟和真实世界的环境有很大的不同,很少能提供相同的预测精度。因此,我们将验证我们提出的方法是否在现实环境中提供更好的预测精度。我们在真实环境中测量通信,并通过将捕获的数据包数据与生成数据的预测精度测量进行转换来生成训练数据。结果表明,该方法的最大正确率为79.71%,与模拟数据的结果相当。
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