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Perfect and Nearly Perfect Sampling of Work-conserving Queues

机译:节省工作队列的完美采样

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摘要

We present sampling-based methods to treat work-conserving queueing systems. A variety of models are studied. Besides the First Come First Served (FCFS) queues, many efforts are putted on the accumulating priority queue (APQ), where a customer accumulates priority linearly while waiting. APQs have Poisson arrivals, multi-class customers with corresponding service durations, and single or multiple servers.Perfect sampling is an approach to draw a sample directly from the steady-state distribution of a Markov chain without explicitly solving for it. Statistical inference can be conducted without initialization bias. If an error can be tolerated within some limit, i.e. the total variation distance between the simulated draw and the stationary distribution can be bounded by a specified number, then we get a so called \u22nearly\u22 perfect sampling.Coupling from the past (CFTP) is one approach to perfect sampling, but it usually requires a bounded state space. One strategy for perfect sampling on unbounded state spaces relies on construction of a reversible dominating process. If only the dominating property is guaranteed, then regenerative method (RM) becomes an alternative choice.In the case where neither the reversibility nor dominance hold, a nearly perfect sampling method will be proposed. It is a variant of dominated CFTP that we call the CFTP Block Absorption (CFTP-BA) method.Time-varying queues with periodic Poisson arrivals are being considered in this thesis. It has been shown that a particular limiting distribution can be obtained for each point in time in the periodic cycle. Because there are no analytical solutions in closed forms, we explore perfect (or nearly perfect) sampling of these systems.
机译:我们提出了基于采样的方法来处理节省工作的排队系统。研究了各种模型。除了“先来先服务”(FCFS)队列外,还对累积优先级队列(APQ)进行了许多努力,在此队列中,客户在等待时线性地累积优先级。 APQ具有Poisson到来,具有相应服务期限的多类客户以及一台或多台服务器。完美采样是一种直接从马尔可夫链的稳态分布中抽取样本而无需明确解决的方法。可以进行统计推断而无需初始化偏差。如果误差可以容忍在一定范围内,即模拟绘图和静态分布之间的总变化距离可以以指定的数字为边界,那么我们将获得所谓的\ u22nearly \ u22完美采样。 )是一种完美采样的方法,但通常需要有界状态空间。在无界状态空间上进行完美采样的一种策略依赖于可逆控制过程的构建。如果只保证主导性,那么再生法(RM)成为替代选择。在可逆性和主导力都不成立的情况下,将提出一种接近完美的采样方法。这是一种主要的CFTP的变体,我们称为CFTP块吸收(CFTP-BA)方法。本文考虑具有周期性P​​oisson到达的时变队列。已经表明,可以在周期性循环中的每个时间点获得特定的极限分布。由于没有封闭形式的分析解决方案,因此我们探索了这些系统的完美(或接近完美)采样。

著录项

  • 作者

    Xiong, Yaofei;

  • 作者单位
  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 English
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