Monitoring in survival analysis and rare event simulation

Monte Carlo methods are a fundamental tool in many areas of statistics. In this thesis, we will examine these methods, especially for rare event simulation. We are mainly interested in the computation of multivariate normal probabilities and in constructing hitting thresholds in survival analysis mo...

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Main Author: Phinikettos, Ioannis
Other Authors: Gandy, Axel ; Young, Alastair
Published: Imperial College London 2012
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Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.550210
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spelling ndltd-bl.uk-oai-ethos.bl.uk-5502102017-08-30T03:18:08ZMonitoring in survival analysis and rare event simulationPhinikettos, IoannisGandy, Axel ; Young, Alastair2012Monte Carlo methods are a fundamental tool in many areas of statistics. In this thesis, we will examine these methods, especially for rare event simulation. We are mainly interested in the computation of multivariate normal probabilities and in constructing hitting thresholds in survival analysis models. Firstly, we develop an algorithm for computing high dimensional normal probabilities. These kinds of probabilities are a fundamental tool in many statistical applications. The new algorithm exploits the diagonalisation of the covariance matrix and uses various variance reduction techniques. Its performance is evaluated via a simulation study. The new method is designed for computing small exceedance probabilities. Secondly, we introduce a new omnibus cumulative sum chart for monitoring in survival analysis models. By omnibus we mean that it is able to detect any change. This chart exploits the absolute differences between the Kaplan-Meier estimator and the in-control distribution over specific time intervals. A simulation study is presented that evaluates the performance of our proposed chart and compares it to existing methods. Thirdly, we apply the method of adaptive multilevel splitting for the estimation of hitting probabilities and hitting thresholds for the survival analysis cumulative sum charts. Simulation results are presented evaluating the benefits of adaptive multilevel splitting. Finally, we extend the idea of adaptive multilevel splitting by estimating not just a hitting probability, but the whole distribution function up to a certain point. A theoretical result is proved that is used to construct confidence bands for the distribution function conditioned on lying in a closed interval.518.282Imperial College Londonhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.550210http://hdl.handle.net/10044/1/9518Electronic Thesis or Dissertation
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sources NDLTD
topic 518.282
spellingShingle 518.282
Phinikettos, Ioannis
Monitoring in survival analysis and rare event simulation
description Monte Carlo methods are a fundamental tool in many areas of statistics. In this thesis, we will examine these methods, especially for rare event simulation. We are mainly interested in the computation of multivariate normal probabilities and in constructing hitting thresholds in survival analysis models. Firstly, we develop an algorithm for computing high dimensional normal probabilities. These kinds of probabilities are a fundamental tool in many statistical applications. The new algorithm exploits the diagonalisation of the covariance matrix and uses various variance reduction techniques. Its performance is evaluated via a simulation study. The new method is designed for computing small exceedance probabilities. Secondly, we introduce a new omnibus cumulative sum chart for monitoring in survival analysis models. By omnibus we mean that it is able to detect any change. This chart exploits the absolute differences between the Kaplan-Meier estimator and the in-control distribution over specific time intervals. A simulation study is presented that evaluates the performance of our proposed chart and compares it to existing methods. Thirdly, we apply the method of adaptive multilevel splitting for the estimation of hitting probabilities and hitting thresholds for the survival analysis cumulative sum charts. Simulation results are presented evaluating the benefits of adaptive multilevel splitting. Finally, we extend the idea of adaptive multilevel splitting by estimating not just a hitting probability, but the whole distribution function up to a certain point. A theoretical result is proved that is used to construct confidence bands for the distribution function conditioned on lying in a closed interval.
author2 Gandy, Axel ; Young, Alastair
author_facet Gandy, Axel ; Young, Alastair
Phinikettos, Ioannis
author Phinikettos, Ioannis
author_sort Phinikettos, Ioannis
title Monitoring in survival analysis and rare event simulation
title_short Monitoring in survival analysis and rare event simulation
title_full Monitoring in survival analysis and rare event simulation
title_fullStr Monitoring in survival analysis and rare event simulation
title_full_unstemmed Monitoring in survival analysis and rare event simulation
title_sort monitoring in survival analysis and rare event simulation
publisher Imperial College London
publishDate 2012
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.550210
work_keys_str_mv AT phinikettosioannis monitoringinsurvivalanalysisandrareeventsimulation
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