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Approximate Online Learning Algorithms for Optimal Monitoring in Multi-Channel Wireless Networks

机译:用于多通道无线网络中最佳监视的近似在线学习算法

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We consider the problem of optimally selecting m out of M sniffers and assigning each sniffer one of the K channels to monitor the transmission activities in a multi-channel wireless network. The activity of users is initially unknown to the sniffers and is to be learned along with channel assignment decisions. Even with the full knowledge of user activity statistics, the offline optimization problem is known to be NP-hard. In this paper, we first propose a centralized online approximation algorithm and show that it incurs sub-linear regret bounds over time. A distributed algorithm is then proposed with moderate message complexity. We demonstrate both analytically and empirically the trade-offs between the computation cost and the rate of learning.
机译:我们考虑以下问题:从M个嗅探器中最佳选择m个,并为每个嗅探器分配K个通道之一,以监视多通道无线网络中的传输活动。嗅探器最初不知道用户的活动,并且将与频道分配决策一起学习用户的活动。即使完全了解用户活动统计信息,离线优化问题也被认为是NP难题。在本文中,我们首先提出了一种集中式的在线逼近算法,并证明了该算法会随着时间的推移产生亚线性后悔界限。然后提出了一种具有中等消息复杂度的分布式算法。我们在分析和经验上都证明了计算成本和学习率之间的权衡。

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