多用户的机会频谱接入:竞争下的学习

Anima Anandkumar, Nithin Michael, A. Tang
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引用次数: 184

摘要

考虑了以认知系统吞吐量最大化为目标的多辅助用户协同分配问题。信道可用性统计数据最初对次要用户是未知的,并通过传感样本学习。提出了两种分布式学习和分配方案,即在分布式学习和分配中使认知系统吞吐量最大化或总遗憾最小化。第一种方案假定次要用户的预分配秩方面的最小先验信息,而第二种方案是完全分布的,并且假定没有这种先验信息。这两种方案在感知时隙的数量上具有可证明的对数和遗憾。对于槽数渐近对数的任何学习方案,都导出了下界。因此,在分布式学习和分配中,我们的方案在遗憾度方面实现了渐近阶最优性。
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Opportunistic Spectrum Access with Multiple Users: Learning under Competition
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.
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