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Regret-Minimizing Exploration in HetNets with mmWave

机译:使用mmWave在HetNets中最大程度地减少遗憾

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We model and analyze a User-Equipment (UE) based wireless network selection method where individuals act on their stochastic knowledge of the expected behavior off their available networks. In particular, we focus on networks with millimeter-wave (mmWave) radio. Modeling mmWave radio access technologies (RATs) as a stochastic 3-state process based on their physical layer characteristics in Line-of-Sight (LOS), Non-Line-of-Sight (NLOS), and Outage states, we make the realistic assumption that users have no knowledge of the statistics of the RATs and must learn these while maximizing the throughput obtained. We develop an online learning-based approach to access network selection: a user-centric Multi-Armed Bandit Problem that incorporates the cost of switching access networks. We develop an online learning policy that groups network access to minimize costs for RAT selection, analyze the regret (loss due to uncertainty) of our algorithm. We also show that our algorithm obtains optimal regret and in numerical examples achieves 24% increase in total throughput compared to existing techniques for high throughput mmWave RATs that vary over a fast timescale.
机译:我们对基于用户设备(UE)的无线网络选择方法进行建模和分析,其中个人根据其对可用网络的预期行为的随机知识进行操作。特别是,我们专注于具有毫米波(mmWave)无线电的网络。基于毫米波无线电接入技术(RAT),根据它们在视线(LOS),非视线(NLOS)和断电状态下的物理层特性,将其建模为随机三态过程,假设用户不了解RAT的统计信息,必须在最大程度地获得吞吐量的同时学习这些统计信息。我们开发了一种基于在线学习的访问网络选择方法:一个以用户为中心的多武装强盗问题,其中包含了交换访问网络的成本。我们开发了一种在线学习策略,该策略将网络访问分组以最大程度地降低RAT选择的成本,并分析算法的遗憾(由于不确定性造成的损失)。我们还显示,与现有技术相比,我们的算法获得了最佳的遗憾,并且在数值示例中,与用于快速变化的高吞吐量mmWave RAT的现有技术相比,总吞吐量提高了24%。

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