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Learning for serving deadline-constrained traffic in multi-channel wireless networks

机译:学习如何在多通道无线网络中为受期限限制的流量提供服务

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We study the problem of serving randomly arriving and delay-sensitive traffic over a multi-channel communication system with time-varying channel states and unknown statistics. This problem deviates from the classical exploration-exploitation setting in that the design and analysis must accommodate the dynamics of packet availability and urgency as well as the cost of each channel use at the time of decision. To that end, we have developed and investigated two policies, one index-based (UCB-Deadline) and the other Bayesian (TS-Deadline), both of which perform dynamic channel allocation decisions that incorporate these traffic requirements and costs. Under symmetric channel conditions, we have proved that the UCB-Deadline policy can achieve bounded regret in the likely case where the cost of using a channel is not too high to prevent all transmissions, and logarithmic regret otherwise. In our numerical studies, we also show that TS-Deadline achieves superior performance over its UCB counterpart, making it a potentially useful alternative when fast convergence to optimal is important.
机译:我们研究了在具有时变信道状态和未知统计信息的多信道通信系统上为随机到达和时延敏感的流量提供服务的问题。这个问题与经典的勘探开发环境不同,因为设计和分析必须适应数据包可用性和紧迫性的动态变化,并且在决策时必须考虑每个通道的使用成本。为此,我们开发并研究了两种策略,一种是基于索引的(UCB-Deadline)策略,另一种是贝叶斯(TS-Deadline)策略,它们都执行动态信道分配决策,这些决策综合了这些流量需求和成本。在对称信道条件下,我们已经证明,在使用信道的成本不太高以阻止所有传输的可能情况下,UCB截止期限策略可以实现有限的遗憾,否则将对数遗憾。在我们的数值研究中,我们还表明,TS-Deadline的性能优于UCB同类产品,当快速收敛至最佳状态很重要时,它可能成为有用的替代方法。

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