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A Novel Cross Entropy Approach for Offloading Learning in Mobile Edge Computing

机译:移动边缘计算中卸载学习的一种新型交叉熵方法

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摘要

In this letter, we propose a novel offloading learning approach to compromise energy consumption and latency in a multi-tier network with mobile edge computing. In order to solve this integer programming problem, instead of using conventional optimization tools, we apply a cross entropy approach with iterative learning of the probability of elite solution samples. Compared to existing methods, the proposed one in this network permits a parallel computing architecture and is verified to be computationally very efficient. Specifically, it achieves performance close to the optimal and performs well with different choices of the values of hyperparameters in the proposed learning approach.
机译:在这封信中,我们提出了一种新颖的卸载学习方法,以利用移动边缘计算来降低多层网络中的能耗和等待时间。为了解决此整数规划问题,而不是使用常规的优化工具,我们采用交叉熵方法,对精英解决方案样本的概率进行迭代学习。与现有方法相比,该网络中提出的方法允许并行计算体系结构,并被证明在计算上非常有效。具体而言,在拟议的学习方法中,它可以达到接近最佳的性能,并且在选择不同的超参数值时表现良好。

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