Learning to Optimize: Training Deep Neural Networks for Interference Management

计算机科学 资源配置 人工神经网络 加速 无线网络 计算复杂性理论 深度学习 最优化问题 近似算法 资源管理(计算) 无线 数学优化 钥匙(锁) 计算机工程 人工智能 算法 分布式计算 数学 并行计算 电信 计算机网络 计算机安全
作者
Haoran Sun,Xiangyi Chen,Qingjiang Shi,Mingyi Hong,Xiao Fu,Nicholas D. Sidiropoulos
出处
期刊:IEEE Transactions on Signal Processing [Institute of Electrical and Electronics Engineers]
卷期号:66 (20): 5438-5453 被引量:812
标识
DOI:10.1109/tsp.2018.2866382
摘要

For the past couple of decades, numerical optimization has played a central role in addressing wireless resource management problems such as power control and beamformer design. However, optimization algorithms often entail considerable complexity, which creates a serious gap between theoretical design/analysis and real-time processing. To address this challenge, we propose a new learning-based approach. The key idea is to treat the input and output of a resource allocation algorithm as an unknown non-linear mapping and use a deep neural network (DNN) to approximate it. If the non-linear mapping can be learned accurately by a DNN of moderate size, then resource allocation can be done in almost real time -- since passing the input through a DNN only requires a small number of simple operations. In this work, we address both the thereotical and practical aspects of DNN-based algorithm approximation with applications to wireless resource management. We first pin down a class of optimization algorithms that are `learnable' in theory by a fully connected DNN. Then, we focus on DNN-based approximation to a popular power allocation algorithm named WMMSE (Shi {\it et al} 2011). We show that using a DNN to approximate WMMSE can be fairly accurate -- the approximation error $\epsilon$ depends mildly [in the order of $\log(1/\epsilon)$] on the numbers of neurons and layers of the DNN. On the implementation side, we use extensive numerical simulations to demonstrate that DNNs can achieve orders of magnitude speedup in computational time compared to state-of-the-art power allocation algorithms based on optimization.
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