论文标题
通过rényiDivergence在大偏差量表上的稳健界限和优化
Robust bounds and optimization at the large deviations scale for queueing models via Rényi divergence
论文作者
论文摘要
本文开发了在大偏差(LD)等级以排队模型的强大概率估计的工具。这些工具基于最近引入的强大rényi界限,该界限提供了LD估算(以及更一般的风险敏感(RS)成本估算值),该界限在不确定性类别的模型中均匀地持有,前提是该类别根据RényiDivergence定义了有关参考模型的定义,并且该类别可用于参考模型。该方法的一种非常有吸引力的质量是,估算所适用的类可能包括硬模型,例如高度非马克维亚模型以及无法使用LD原理的类。我们的治疗提供了精确的表达方式,以及对标记过程家族的rényi发散率的界限,包括作为特殊情况的更新过程。另一个贡献是将鲁棒的RS控制问题转化的一般结果,其中通过rényi差异提出鲁棒性,以在控制集合是有限的尺寸尺寸凸集时,以有限的尺寸凸优化问题。对排队的影响是巨大的,因为它们适用于一般性。这在两个非马克维亚排队模型上得到了证明。一个是将被视为RS控制问题的多类单服务器队列,其调度为控制过程和指数加权队列长度作为成本。第二个是带有叛逆的多服务器队列,其概率是非典型的叛逆计数作为绩效标准。就LD分析而言,以前在这些模型中的任何一个都没有可用的稳定估计或非马克维亚治疗。
This paper develops tools to obtain robust probabilistic estimates for queueing models at the large deviations (LD) scale. These tools are based on the recently introduced robust Rényi bounds, which provide LD estimates (and more generally risk-sensitive (RS) cost estimates) that hold uniformly over an uncertainty class of models, provided that the class is defined in terms of Rényi divergence with respect to a reference model and that estimates are available for the reference model. One very attractive quality of the approach is that the class to which the estimates apply may consist of hard models, such as highly non-Markovian models and ones for which the LD principle is not available. Our treatment provides exact expressions as well as bounds on the Rényi divergence rate on families of marked point processes, including as a special case renewal processes. Another contribution is a general result that translates robust RS control problems, where robustness is formulated via Rényi divergence, to finite dimensional convex optimization problems, when the control set is a finite dimensional convex set. The implications to queueing are vast, as they apply in great generality. This is demonstrated on two non-Markovian queueing models. One is the multiclass single-server queue considered as a RS control problem, with scheduling as the control process and exponential weighted queue length as cost. The second is the many-server queue with reneging, with the probability of atypically large reneging count as performance criterion. As far as LD analysis is concerned, no robust estimates or non-Markovian treatment were previously available for either of these models.