Large-scale cellular traffic prediction based on graph convolutional networks with transfer learning

被引:0
|
作者
Xu Zhou
Yong Zhang
Zhao Li
Xing Wang
Juan Zhao
Zhao Zhang
机构
[1] Beijing University of Posts and Telecommunications,School of Electronic Engineering
[2] Beijing University of Posts and Telecommunications,Beijing Key Laboratory of Work Safety Intelligent Monitoring
[3] Center of AI and Intelligent Operation R&D,undefined
[4] China Mobile Research Institude,undefined
来源
关键词
Cellular traffic prediction; Graph convolutional network; Transfer learning; Big data;
D O I
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学科分类号
摘要
Intelligent cellular traffic prediction is very important for mobile operators to achieve resource scheduling and allocation. In reality, people often need to predict very large scale of cellular traffic involving thousands of cells. This paper proposes a transfer learning strategy based on graph convolution neural network to achieve the task of large-scale traffic prediction. In this paper, we design a novel spatial-temporal graph convolutional network based on attention mechanism (STA-GCN). In order to achieve large-scale traffic prediction, this paper proposes a regional transfer learning strategy based on STA-GCN to improve knowledge reuse. The effectiveness of STA-GCN is validated through two real-world traffic datasets. The results show that STA-GCN outperforms the state-of-art baselines, and the transfer learning strategy can effectively reduce the number of epochs while training.
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页码:5549 / 5559
页数:10
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