Studies in Stochastic Networks: Efficient Monte-Carlo Methods, Modeling and Asymptotic Analysis

This dissertation contains two parts. The first part develops a series of bias reduction techniques for: point processes on stable unbounded regions, steady-state distribution of infinite server queues, steady-state distribution of multi-server loss queues and loss networks and sample path of stocha...

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Main Author: Dong, Jing
Language:English
Published: 2014
Subjects:
Online Access:https://doi.org/10.7916/D8X63K4F
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spelling ndltd-columbia.edu-oai-academiccommons.columbia.edu-10.7916-D8X63K4F2019-05-09T15:14:33ZStudies in Stochastic Networks: Efficient Monte-Carlo Methods, Modeling and Asymptotic AnalysisDong, Jing2014ThesesOperations researchMathematicsThis dissertation contains two parts. The first part develops a series of bias reduction techniques for: point processes on stable unbounded regions, steady-state distribution of infinite server queues, steady-state distribution of multi-server loss queues and loss networks and sample path of stochastic differential equations. These techniques can be applied for efficient performance evaluation and optimization of the corresponding stochastic models. We perform detailed running time analysis under heavy traffic of the perfect sampling algorithms for infinite server queues and multi-server loss queues and prove that the algorithms achieve nearly optimal order of complexity. The second part aims to model and analyze the load-dependent slowdown effect in service systems. One important phenomenon we observe in such systems is bi-stability, where the system alternates randomly between two performance regions. We conduct heavy traffic asymptotic analysis of system dynamics and provide operational solutions to avoid the bad performance region.Englishhttps://doi.org/10.7916/D8X63K4F
collection NDLTD
language English
sources NDLTD
topic Operations research
Mathematics
spellingShingle Operations research
Mathematics
Dong, Jing
Studies in Stochastic Networks: Efficient Monte-Carlo Methods, Modeling and Asymptotic Analysis
description This dissertation contains two parts. The first part develops a series of bias reduction techniques for: point processes on stable unbounded regions, steady-state distribution of infinite server queues, steady-state distribution of multi-server loss queues and loss networks and sample path of stochastic differential equations. These techniques can be applied for efficient performance evaluation and optimization of the corresponding stochastic models. We perform detailed running time analysis under heavy traffic of the perfect sampling algorithms for infinite server queues and multi-server loss queues and prove that the algorithms achieve nearly optimal order of complexity. The second part aims to model and analyze the load-dependent slowdown effect in service systems. One important phenomenon we observe in such systems is bi-stability, where the system alternates randomly between two performance regions. We conduct heavy traffic asymptotic analysis of system dynamics and provide operational solutions to avoid the bad performance region.
author Dong, Jing
author_facet Dong, Jing
author_sort Dong, Jing
title Studies in Stochastic Networks: Efficient Monte-Carlo Methods, Modeling and Asymptotic Analysis
title_short Studies in Stochastic Networks: Efficient Monte-Carlo Methods, Modeling and Asymptotic Analysis
title_full Studies in Stochastic Networks: Efficient Monte-Carlo Methods, Modeling and Asymptotic Analysis
title_fullStr Studies in Stochastic Networks: Efficient Monte-Carlo Methods, Modeling and Asymptotic Analysis
title_full_unstemmed Studies in Stochastic Networks: Efficient Monte-Carlo Methods, Modeling and Asymptotic Analysis
title_sort studies in stochastic networks: efficient monte-carlo methods, modeling and asymptotic analysis
publishDate 2014
url https://doi.org/10.7916/D8X63K4F
work_keys_str_mv AT dongjing studiesinstochasticnetworksefficientmontecarlomethodsmodelingandasymptoticanalysis
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