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首页> 外文期刊>Computational Intelligence Magazine, IEEE >Mining Mobile Intelligence for Wireless Systems: A Deep Neural Network Approach
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Mining Mobile Intelligence for Wireless Systems: A Deep Neural Network Approach

机译:用于无线系统的挖掘移动智能:深度神经网络方法

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Wireless big data contain valuable information on users' behaviors and preferences, which can drive the design and optimization for wireless systems. The fundamental issue is how to mine mobile intelligence and further incorporate them into wireless systems. To this end, this article discusses two challenges on big data based wireless system design and optimization, and proposes a unified framework to tackle them with the help of Deep Neural Networks (DNNs) and online learning techniques. In particular, we propose a DNN architecture by incorporating an embedding layer to project different types of raw data to a latent space and utilize a regression or classification function to predict the mobile access pattern. It outperforms the best traditional machine learning algorithm (76% vs. 63%) significantly. Moreover, combining the proposed DNN architecture with online learning techniques, we show two cases on how to apply the mobile intelligence for wireless video applications, including video adaption and video pre-fetching. In the former case, we utilize the proposed DNN method to predict the dynamics of user count within the coverage of base stations, and adaptively adjust the bitrate for video streaming to improve the video watching experience. In the latter one, we utilize the proposed method to predict the user trajectory, i.e., the associated base stations, and conduct content prefetching to reduce the access latency. Evaluating the performance with a real wireless dataset, we show that the perceived video QoE and cache hit ratio are greatly improved (0.7db and 25% respectively).
机译:无线大数据包含有关用户行为和偏好的有价值的信息,可以推动无线系统的设计和优化。基本问题是如何挖掘移动智能,并进一步将它们纳入无线系统。为此,本文讨论了基于大数据的无线系统设计和优化的两个挑战,并提出了统一的框架,以便在深度神经网络(DNN)和在线学习技术的帮助下解决它们。特别地,我们通过将嵌入层纳入嵌入层来提出DNN架构,以将不同类型的原始数据投影到潜伏空间,并利用回归或分类功能来预测移动访问模式。它优于最佳的传统机器学习算法(76%与63%)显着。此外,将所提出的DNN架构与在线学习技术相结合,我们在有关如何应用移动智能的两个案例中,包括视频自适应和视频预选择。在前一种情况下,我们利用所提出的DNN方法来预测基站覆盖范围内用户数的动态,并自适应地调整用于视频流的比特率以改善视频观看体验。在后一种之一中,我们利用所提出的方法来预测用户轨迹,即相关基站,并对内容预取,以减少访问等待时间。评估具有真实无线数据集的性能,我们表明感知视频QoE和缓存命中率大大提高(分别为0.7dB和25%)。

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