A Deep Learning Framework with Spatial-Temporal Attention Mechanism for Cellular Traffic Prediction

Yun Gao, Xin Wei, Liang Zhou, Haibing Lv
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引用次数: 6

Abstract

Currently, traffic prediction in cellular communication has become an important way to relieve traffic congestion, and then guarantee users' quality of experience (QoE) in multimedia service. However, when concerning traffic prediction in the context of big data, traditional deep learning models only have limited memory lengths and thus do not satisfy high prediction accuracy demand. In this paper, we design a new deep learningbased framework, which is built on our proposed novel spatialtemporal attention mechanism, to further increase the prediction accuracy of cellular traffic resource. Specifically, we firstly design a big data hierarchical architecture with four levels to extract meaningful information. Then, considering that cellular traffic resource from base stations characterizes spatial-temporal dependencies, we integrate conventional temporal attention mechanism for target area with that from spatial neighbor areas, proposing a novel spatial-temporal attention mechanism. Finally, we utilize this spatial-temporal attention mechanism based LSTM (STaLSTMs) to predict cellular traffic resource from base stations. Experimental results demonstrate that our proposed framework has better performances in cellular traffic prediction than other competing models. Importantly, in some application scenarios, this framework can also maintain high accuracy but only with 60% data.
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基于时空注意机制的蜂窝交通预测深度学习框架
目前,蜂窝通信中的流量预测已经成为缓解流量拥塞、保证多媒体业务用户体验质量的重要手段。然而,对于大数据背景下的流量预测,传统的深度学习模型只有有限的记忆长度,无法满足较高的预测精度要求。在本文中,我们设计了一个新的基于深度学习的框架,该框架基于我们提出的新的时空注意机制,以进一步提高蜂窝流量资源的预测精度。具体而言,我们首先设计了一个四层的大数据层次架构,以提取有意义的信息。然后,考虑到蜂窝基站业务资源具有时空依赖性的特点,将传统的目标区域时间注意机制与空间相邻区域时间注意机制相结合,提出了一种新的时空注意机制。最后,我们利用这种基于时空注意机制的LSTM (STaLSTMs)来预测来自基站的蜂窝通信资源。实验结果表明,我们提出的框架在蜂窝流量预测方面比其他竞争模型具有更好的性能。重要的是,在某些应用场景中,该框架也可以保持较高的精度,但只有60%的数据。
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