Age-of-Information (AoI) is a performance metric for scheduling systems that measures the freshness of the data available at the intended destination. AoI is formally defined as the time elapsed since the destination received the recent most update from the source. We consider the problem of scheduling to minimize the cumulative AoI in a multi-source multi-channel setting. Our focus is on the setting where channel statistics are unknown and we model the problem as a distributed multi-armed bandit problem. For an appropriately defined AoI regret metric, we provide analytical performance guarantees of an existing UCB-based policy for the distributed multi-armed bandit problem. In addition, we propose a novel policy based on Thomson Sampling and a hybrid policy that tries to balance the trade-off between the aforementioned policies. Further, we develop AoI-aware variants of these policies in which each source takes its current AoI into account while making decisions. We compare the performance of various policies via simulations.
翻译:信息时代(AoI)是衡量预定目的地现有数据更新程度的排期系统的业绩衡量标准(AoI),正式定义AoI是指自目的地收到来源提供的最新更新资料以来的时间。我们考虑在多来源多渠道环境下尽量减少累积的AoI的时间安排问题。我们的重点是频道统计数据未知的设置,我们将这一问题作为分布式多武装土匪问题模型。对于一个定义适当的AoI遗憾度,我们为分布式多武装土匪问题提供基于UCB的现行政策的分析性绩效保障。此外,我们提出了基于Thomson抽样调查的新政策,以及试图平衡上述政策之间的取舍的混合政策。此外,我们开发了这些政策的AoI-aware变式,其中每个来源在作出决定时都考虑到当前的AoI。我们通过模拟比较各种政策的执行情况。