Generation of Multivariate Random Vectors Using Retrospective- Approximation Methods

碩士 === 大葉工學院 === 工業工程研究所 === 84 === In the process of simulations,the input model often need a set of relative random variables to respond the true condition. And the random variables can have different probable distributions. But most...

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Main Authors: Cheng, Chun-Kung, 鄭群恭
Other Authors: Chen Huifen
Format: Others
Language:zh-TW
Published: 1996
Online Access:http://ndltd.ncl.edu.tw/handle/96257415636899515733
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spelling ndltd-TW-084DYU000300072016-07-15T04:13:07Z http://ndltd.ncl.edu.tw/handle/96257415636899515733 Generation of Multivariate Random Vectors Using Retrospective- Approximation Methods 系統模擬的多變量回溯近似產生法 Cheng, Chun-Kung 鄭群恭 碩士 大葉工學院 工業工程研究所 84 In the process of simulations,the input model often need a set of relative random variables to respond the true condition. And the random variables can have different probable distributions. But most of the literatures of the generation of multivariate simulations emphasized one of the special multivariate family or time series. So the past literatures weren't content with the need of general multivariables. The thesis aimed above questions . In the conditions of having every marginal distribution and a reasonable relative matrix, we develope the algorithms of the multivariate generation. We propose a new algorithm -- "generation of multivariate random vectors using retrospective approximation methods" to generate multivariate random vectors with specified marginal distributions and a specified correlation matrix. Users need only provide the inverse function of different marginal distributions. The algorithms generate multivariate random vectors with marginal-oriented approach. But before using the marginal-oriented approach, $n(n-1)/2$ equations must be solved. We use retrospective approximation algorithms to solve these stochastic root-finding problems. We also improve the algorithms to aries the efficiency by solving concurrently $n(n-1)/2$ equations. We progress the simulated experiments with the algorithms -- "generation of multivariate random vectors using retrospective approximation methods". In the most specified distributions, the algorithms can get good accuracy and efficiency.We analysize the property of stochastic root-finding equations and discuss the correlations between variables that be generated with the algorithms that be proposed by us.In addition to the restriction , we also ask that users can conclude and provide a reasonable correlation matrix to make the algorithms executing the correct "cholesky decomposition". Chen Huifen 陳慧芬 1996 學位論文 ; thesis 51 zh-TW
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language zh-TW
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description 碩士 === 大葉工學院 === 工業工程研究所 === 84 === In the process of simulations,the input model often need a set of relative random variables to respond the true condition. And the random variables can have different probable distributions. But most of the literatures of the generation of multivariate simulations emphasized one of the special multivariate family or time series. So the past literatures weren't content with the need of general multivariables. The thesis aimed above questions . In the conditions of having every marginal distribution and a reasonable relative matrix, we develope the algorithms of the multivariate generation. We propose a new algorithm -- "generation of multivariate random vectors using retrospective approximation methods" to generate multivariate random vectors with specified marginal distributions and a specified correlation matrix. Users need only provide the inverse function of different marginal distributions. The algorithms generate multivariate random vectors with marginal-oriented approach. But before using the marginal-oriented approach, $n(n-1)/2$ equations must be solved. We use retrospective approximation algorithms to solve these stochastic root-finding problems. We also improve the algorithms to aries the efficiency by solving concurrently $n(n-1)/2$ equations. We progress the simulated experiments with the algorithms -- "generation of multivariate random vectors using retrospective approximation methods". In the most specified distributions, the algorithms can get good accuracy and efficiency.We analysize the property of stochastic root-finding equations and discuss the correlations between variables that be generated with the algorithms that be proposed by us.In addition to the restriction , we also ask that users can conclude and provide a reasonable correlation matrix to make the algorithms executing the correct "cholesky decomposition".
author2 Chen Huifen
author_facet Chen Huifen
Cheng, Chun-Kung
鄭群恭
author Cheng, Chun-Kung
鄭群恭
spellingShingle Cheng, Chun-Kung
鄭群恭
Generation of Multivariate Random Vectors Using Retrospective- Approximation Methods
author_sort Cheng, Chun-Kung
title Generation of Multivariate Random Vectors Using Retrospective- Approximation Methods
title_short Generation of Multivariate Random Vectors Using Retrospective- Approximation Methods
title_full Generation of Multivariate Random Vectors Using Retrospective- Approximation Methods
title_fullStr Generation of Multivariate Random Vectors Using Retrospective- Approximation Methods
title_full_unstemmed Generation of Multivariate Random Vectors Using Retrospective- Approximation Methods
title_sort generation of multivariate random vectors using retrospective- approximation methods
publishDate 1996
url http://ndltd.ncl.edu.tw/handle/96257415636899515733
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