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Adaptive CSMA Under the SINR Model: Efficient Approximation Algorithms for Throughput and Utility Maximization

机译:SINR模型下的自适应CSMA:吞吐量和效用最大化的高效近似算法

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We consider a carrier sense multiple access (CSMA)-based scheduling algorithm for a single-hop wireless network under a realistic signal-to-interference-plus-noise ratio model for the interference. We propose two local optimization-based approximation algorithms to efficiently estimate certain attempt rate parameters of CSMA called fugacities. It is known that adaptive CSMA can achieve throughput optimality by sampling feasible schedules from a Gibbs distribution, with appropriate fugacities. Unfortunately, obtaining these optimal fugacities is an NP-hard problem. Furthermore, the existing adaptive CSMA algorithms use a stochastic gradient descent-based method, which usually entails an impractically slow (exponential in the size of the network) convergence to the optimal fugacities. To address this issue, we first propose an algorithm to estimate the fugacities, that can support a given set of desired service rates. The convergence rate and the complexity of this algorithm are independent of the network size, and depend only on the neighborhood size of a link. Furthermore, we show that the proposed algorithm corresponds exactly to performing the well-known Bethe approximation to the underlying Gibbs distribution. Then, we propose another local algorithm to estimate the optimal fugacities under a utility maximization framework, and characterize its accuracy. Numerical results indicate that the proposed methods have a good degree of accuracy, and achieve extremely fast convergence to near-optimal fugacities, and often outperform the convergence rate of the stochastic gradient descent by a few orders of magnitude.
机译:我们考虑在实际的信号干扰加噪声比模型下针对单跳无线网络的基于载波侦听多址(CSMA)的调度算法。我们提出了两种基于局部优化的近似算法来有效地估计CSMA的某些尝试率参数,称为逸度。众所周知,自适应CSMA可以通过从Gibbs分布中采样具有适当逸散度的可行调度表来实现吞吐量优化。不幸的是,获得这些最佳逸度是NP难题。此外,现有的自适应CSMA算法使用基于随机梯度下降的方法,该方法通常需要不切实际地缓慢(网络规模呈指数级)收敛到最佳脆弱性。为了解决这个问题,我们首先提出一种算法来估计脆弱性,该算法可以支持给定的一组期望的服务费率。该算法的收敛速度和复杂度与网络大小无关,并且仅取决于链路的邻域大小。此外,我们证明了所提出的算法完全对应于对基础Gibbs分布执行众所周知的Bethe近似。然后,我们提出了另一种局部算法来估计效用最大化框架下的最优脆弱性,并表征其准确性。数值结果表明,所提出的方法具有较高的精度,并且可以非常快地收敛到接近最优的脆弱度,并且通常比随机梯度下降的收敛速度好几个数量级。

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