Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/32607
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dc.contributor.advisor姜志銘zh_TW
dc.contributor.advisorJiang,Thomas J.en_US
dc.contributor.author郭錕霖zh_TW
dc.contributor.authorKuo,Kun Linen_US
dc.creator郭錕霖zh_TW
dc.creatorKuo,Kun Linen_US
dc.date2007en_US
dc.date.accessioned2009-09-17T05:50:18Z-
dc.date.available2009-09-17T05:50:18Z-
dc.date.issued2009-09-17T05:50:18Z-
dc.identifierG0917515011en_US
dc.identifier.urihttps://nccur.lib.nccu.edu.tw/handle/140.119/32607-
dc.description博士zh_TW
dc.description國立政治大學zh_TW
dc.description應用數學研究所zh_TW
dc.description91751501zh_TW
dc.description96zh_TW
dc.description.abstract單變量c-特徵函數已被證明可處理一些難以使用傳統特徵函數解決的問題,\n在本文中,我們首先提出其反演公式,透過此反演公式,我們獲得(1)Dirichlet隨機向量之線性組合的機率密度函數;(2)以一些有趣測度為參數之Ferguson-Dirichlet過程其隨機動差的機率密度函數;(3)Ferguson-Dirichlet過程之隨機泛函的Lebesgue積分表示式。\n\n本文給予對稱分配之多變量c-特徵函數的新性質,透過這些性質,我們證明在任何$n$維球面上之Ferguson-Dirichlet過程其隨機均值是一對稱分配,並且我們亦獲得其確切的機率密度函數,此外,我們將這些結果推廣至任何n維橢球面上。\n\n我們亦探討條件分配相容性的問題,這個問題在機率理論與貝式計算上有其重要性,我們提出其充要條件。當給定相容的條件分配時,我們不但解決相關聯合分配唯一性的問題,而且也提供方法去獲得所有可能的相關聯合分配,我們亦給予檢驗相容性、唯一性及建構機率密度函數的演算法。\n\n透過相容性的相關理論,我們提出完整且清楚地統合性貝氏反演公式理論,並建構可應用於一般測度空間的廣義貝氏反演公式。此外,我們使用廣義貝氏反演公式提供一個配適機率密度函數的演算法,此演算法沒有疊代演算法(如Gibbs取樣法)的收斂問題。zh_TW
dc.description.abstractThe univariate c-characteristic function has been shown to be important in cases that are hard to manage using the traditional characteristic function. In this thesis, we first give its inversion formulas. We then use them to obtain (1) the probability density functions (PDFs) of a linear combination of the components of a Dirichlet random vector; (2) the PDFs of random functionals of a Ferguson-Dirichlet process with some interesting parameter measures; (3) a Lebesgue integral expression of any random functional\nof the Ferguson-Dirichlet process.\n\nNew properties of the multivariate c-characteristic function with a spherical distribution are given in this thesis. With them, we show that the random mean of a Ferguson-Dirichlet process over a spherical surface in n dimensions has a spherical distribution on the n-dimensional ball. Moreover, we derive its exact PDF. Furthermore, we generalize this result to any ellipsoidal surface in n-space.\n\nWe also study the issue of compatibility for specified conditional distributions. This issue is important in probability theory and Bayesian computations. Several necessary and sufficient conditions for the compatibility are provided. We also address the problem of uniqueness of the associated joint distribution when the given conditionals are compatible. In addition, we provide a method to obtain all possible joint distributions that have the given compatible conditionals. Algorithms for checking the compatibility and the uniqueness, and for constructing all associated densities are also given.\n\nThrough the related compatibility theorems, we provide a fully and cleanly unified theory of inverse Bayes formula (IBF) and construct a generalized IBF (GIBF) that is applicable in the more general measurable space. In addition, using the GIBF, we provide a marginal density fitting algorithm, which avoids the problems of convergence in iterative algorithm such as the Gibbs sampler.en_US
dc.description.tableofcontents書名頁\n謝辭\nContents\nAbstract i\n中文摘要 ii\n1. Introduction 1\n 1.1 The c-characteristic function 1\n 1.2 The Ferguson-Dirichlet process 2\n 1.3 Compatible conditional distributions 4\n 1.4 Inverse Bayes formula 6\n2. Notations and useful equations 7\n 2.1 Notations 7\n 2.2 Useful equations 8\n3. The c-characteristic function 12\n 3.1 The univariate c-characteristic function 12\n 3.2 The multivariate c-characteristic function 13\n 3.3 Inversion formulas of a univariate c-characteristic function 16\n 3.4 Density construction through Fourier transformation 24\n 3.5 Distributions of linear combinations of the components of a Dirichlet random vector 25\n4. The Ferguson-Dirichlet process 31\n 4.1 Random functionals of a Ferguson-Dirichlet process 31\n 4.2 The Ferguson-Dirichlet process over n-dimensional sphere 41\n 4.3 Proof of Theorem 4.5 48\n 4.4 Proof of Theorem 4.6 55\n5. Compatible conditional distributions 59\n 5.1 The bivariate discrete case 59\n 5.2 The trivariate discrete case 77\n 5.3 The general discrete case 91\n 5.4 The bivariate continuous case 93\n 5.5 The general continuous case 98\n6. Generalized inverse Bayes formula 102\n 6.1 The finite and discrete case 102\n 6.2 The continuous case 108\n 6.3 Algorithm 115\n7. Conclusions 119\nReferences 121zh_TW
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dc.language.isoen_US-
dc.source.urihttp://thesis.lib.nccu.edu.tw/record/#G0917515011en_US
dc.subjectc-特徵函數zh_TW
dc.subject相容性zh_TW
dc.subjectFerguson-Dirichlet過程zh_TW
dc.subject廣義貝氏反演公式zh_TW
dc.subject隨機泛函zh_TW
dc.subjectc-characteristic functionen_US
dc.subjectcompatibilityen_US
dc.subjectFerguson-Dirichlet processen_US
dc.subjectgeneralized inverse Bayes formulaen_US
dc.subjectrandom functionalen_US
dc.title研究Ferguson-Dirichlet過程和條件分配族相容性之新工具zh_TW
dc.titleNew tools for studying the Ferguson-Dirichlet process and compatibility of a family of conditionalsen_US
dc.typethesisen
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