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Traffic Prediction Based on Random Connectivity in Deep Learning with Long Short-Term Memory

机译:带有长短期记忆的深度学习中基于随机连通性的流量预测

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Traffic prediction plays an important role in evaluating the performance of telecommunication networks and attracts intense research interests. A significant number of algorithms and models have been put forward to analyse traffic data and make prediction. In the recent big data era, deep learning has been exploited to mine the profound information hidden in the data. In particular, Long Short-Term Memory (LSTM), one kind of Recurrent Neural Network (RNN) schemes, has attracted a lot of attentions due to its capability of processing the long-range dependency embedded in the sequential traffic data. However, LSTM has considerable computational cost, which can not be tolerated in tasks with stringent latency requirement. In this paper, we propose a deep learning model based on LSTM, called Random Connectivity LSTM (RCLSTM). Compared to the conventional LSTM, RCLSTM makes a notable breakthrough in the formation of neural network, which is that the neurons are connected in a stochastic manner rather than full connected. We apply the RCLSTM to predict traffic and validate that the RCLSTM with even 35% neural connectivity still shows a satisfactory performance. When we gradually add training samples, the performance of RCLSTM becomes increasingly closer to the baseline LSTM. Moreover, for the input traffic sequences of enough length, the RCLSTM exhibits even superior prediction accuracy than the baseline LSTM.
机译:流量预测在评估电信网络的性能中起着重要作用,并且引起了广泛的研究兴趣。已经提出了大量算法和模型来分析交通数据并进行预测。在最近的大数据时代,深度学习已被用来挖掘隐藏在数据中的深刻信息。特别地,长期短期记忆(LSTM)是一种递归神经网络(RNN)方案,由于其能够处理嵌入在顺序交通数据中的远程依存关系而备受关注。但是,LSTM具有相当大的计算成本,在具有严格延迟要求的任务中是不能容忍的。在本文中,我们提出了一种基于LSTM的深度学习模型,称为随机连接LSTM(RCLSTM)。与传统的LSTM相比,RCLSTM在神经网络的形成方面有了显着突破,即神经元以随机方式连接而不是完全连接。我们将RCLSTM应用于流量预测,并验证即使具有35%的神经连通性的RCLSTM仍然显示出令人满意的性能。当我们逐渐添加训练样本时,RCLSTM的性能越来越接近于基线LSTM。而且,对于足够长的输入业务序列,RCLSTM的预测准确性甚至比基线LSTM还要高。

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