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Adaptive shortest-path routing under unknown and stochastically varying link states

机译:在未知和随机变化的链路状态下的自适应最短路径路由

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We consider adaptive shortest-path routing in wireless networks. In this problem, we aim to optimize the quality of communication between a source and a destination through adaptive path selection. Due to the randomness and uncertainties in the network dynamics, the state of each communication link varies over time according to a stochastic process with unknown distributions. The link states are not directly observable. The aggregated end-to-end cost of a path from the source to the destination is revealed after the path is chosen for communication. The objective is an adaptive path selection algorithm that minimizes regret defined as the additional cost over the ideal scenario where the best path is known a priori. This problem can be cast as a variation of the classic multi-armed bandit (MAB) problem with each path as an arm and arms dependent through common links. We show that by exploiting arm dependencies, a regret polynomial with the network size can be achieved while maintaining the optimal logarithmic order with time. This is in sharp contrast with the exponential regret order with the network size offered by a direct application of the classic MAB policies that ignores arm dependencies. Furthermore, our results are obtained under a general model of link state distributions (including heavy-tailed distributions). These results find applications in cognitive radio and ad hoc networks with unknown and dynamic communication environments.
机译:我们考虑在无线网络中的自适应最短路径路由。在这个问题中,我们的目标是通过自适应路径选择优化源和目的地之间的通信质量。由于网络动态中的随机性和不确定性,根据具有未知分布的随机过程,每个通信链路的状态随时间变化。链接状态不是直接可观察到的。在选择路径以进行通信之后,将显示从源到目的地的路径的聚合端到端成本。该目标是一个自适应路径选择算法,最小化被定义为额外成本的后续成本,在最佳的路径已知先验之中。该问题可以作为经典多武装强盗(MAB)问题的变化作为通过常用链路所依赖的臂和臂的每个路径的变化。我们表明,通过利用ARM依赖项,可以在维护最佳对数顺序的同时实现具有网络大小的遗憾多项式。这与具有通过直接应用于忽略ARM依赖性的经典MAB策略提供的网络大小的指数遗憾的对比。此外,我们的结果是在链路状态分布(包括重型分布)的一般模型中获得的。这些结果在认知无线电和具有未知和动态通信环境中的Ad Hoc网络中的应用。

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