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Opportunistic Spectrum Access with Multiple Users: Learning under Competition

机译:多用户机会频谱访问:竞争中的学习

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The problem of cooperative allocation among multiple secondary users to maximize cognitive system throughput is considered. The channel availability statistics are initially unknown to the secondary users and are learnt via sensing samples. Two distributed learning and allocation schemes which maximize the cognitive system throughput or equivalently minimize the total regret in distributed learning and allocation are proposed. The first scheme assumes minimal prior information in terms of pre-allocated ranks for secondary users while the second scheme is fully distributed and assumes no such prior information. The two schemes have sum regret which is provably logarithmic in the number of sensing time slots. A lower bound is derived for any learning scheme which is asymptotically logarithmic in the number of slots. Hence, our schemes achieve asymptotic order optimality in terms of regret in distributed learning and allocation.
机译:考虑了多个二级用户之间的合作分配问题,以最大程度地提高认知系统的吞吐量。信道可用性统计信息最初对于辅助用户是未知的,并且是通过感测样本学习的。提出了两种最大化认知系统吞吐量或等效地最小化分布式学习和分配中总遗憾的分布式学习和分配方案。在第二方案被完全分发的同时,第一方案假定针对次级用户的针对预分配等级的最少的先验信息,并且不假定这样的先验信息。这两种方案都令人遗憾,这在检测时隙的数量上证明是对数的。对于在时隙数上渐近对数的任何学习方案,得出一个下限。因此,我们的方案在分布式学习和分配中的遗憾方面达到了渐近阶最优性。

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