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Machine Learning-Driven Optimal Proactive Edge Caching in Wireless Small Cell Networks

机译:无线小型蜂窝网络中机器学习驱动的最佳主动边缘缓存

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In this paper, we proposed a novel approach for proactive edge caching in wireless small cell networks. Specifically, we propose using a recurrent neural network for predicting the content popularity with low computational complexity. The mean estimation error of the adopted recurrent neural network could be very close to that of the optimal linear prediction filter utilizing all past history. Based on the predicted content popularity, we formulate and solve a minimum cost flow problem in order to optimally place content files at edge caches. Since the computational complexity of the adopted recurrent neural network is relatively low and the minimum cost flow problem can be solved in polynomial time, the proposed approach is feasible in practice. Simulation results show that the proposed approach outperforms a greedy approach and can significantly reduce the bandwidth consumption of the backhaul network.
机译:在本文中,我们提出了一种用于无线小型蜂窝网络中主动边缘缓存的新方法。具体来说,我们建议使用递归神经网络以较低的计算复杂度来预测内容的受欢迎程度。采用的递归神经网络的平均估计误差可能非常接近利用所有过去历史的最优线性预测滤波器的平均估计误差。基于预测的内容受欢迎程度,我们制定并解决了最低成本流程问题,以便将内容文件最佳地放置在边缘缓存中。由于所采用的递归神经网络的计算复杂度较低,并且可以在多项式时间内解决最小成本流问题,因此该方法在实践中是可行的。仿真结果表明,所提出的方法优于贪婪的方法,可以显着减少回程网络的带宽消耗。

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