대구한의대학교 향산도서관

상세정보

부가기능

A Geometric Framework for Modeling and Inference using the Nonparametric Fisher?Rao metric

상세 프로파일

상세정보
자료유형학위논문
서명/저자사항A Geometric Framework for Modeling and Inference using the Nonparametric Fisher?Rao metric.
개인저자Saha, Abhijoy.
단체저자명The Ohio State University. Statistics.
발행사항[S.l.]: The Ohio State University., 2019.
발행사항Ann Arbor: ProQuest Dissertations & Theses, 2019.
형태사항187 p.
기본자료 저록Dissertations Abstracts International 81-06B.
Dissertation Abstract International
ISBN9781392380895
학위논문주기Thesis (Ph.D.)--The Ohio State University, 2019.
일반주기 Source: Dissertations Abstracts International, Volume: 81-06, Section: B.
Advisor: Kurtek, Sebastian.
이용제한사항This item must not be sold to any third party vendors.
요약With rapid increase in the quantity and complexity of available data, we have embraced the idea of using probability models for gaining deeper insights into data generating mechanisms. Probability density functions (PDFs) form the crux of such models and provide a rigorous framework for statistical inference. However, the representation space of PDFs is infinite-dimensional and non-linear, and relevant statistical tools need to be developed for use on this restricted function space of PDFs accordingly. This dissertation focuses on building a unified geometric framework for analyzing PDFs, and subsequently defining efficient computational tools for their statistical analysis. Specifically, we use a Riemannian geometric framework based on the nonparametric Fisher-Rao metric on the manifold of PDFs. Under the square-root density representation, the manifold can be identified with the positive orthant of the unit hypersphere, and the Fisher-Rao metric reduces to the standard L.
요약2 metric. We consider three different theoretical and applied statistical problems, all of which utilize the fundamental idea of exploiting such a Riemannian structure of PDFs to perform valid statistical analysis in an efficient manner.First, we demonstrate the utility of geometry-based approaches in a class of PDF approximation methods. We propose a geometric framework for variational inference in Bayesian models, where we formulate the task of approximating the posterior density based on the 慣-divergence function, instead of the classical Kullback-Leibler divergence function. We also propose a novel gradient-based algorithm for the variational problem and examine its properties. Through multiple simulations and real-data applications, we demonstrate the utility of the proposed geometric framework and algorithm on several Bayesian models.Second, we consider the idea of assessing model performance under misspecifications, which is intricately linked to the geometry of the space of PDFs, and can be used to evaluate the impact of various model assumptions. We study sensitivity of nonparametric Bayesian models for density estimation, based on Dirichlet-type priors, to perturbations of either the precision parameter or the base probability measure in the prior. To quantify the different effects of the perturbations of the parameters and hyperparameters in these models on the posterior, we define three geometrically-motivated global sensitivity measures. We validate our approach using multiple simulation studies, and consider the problem of sensitivity analysis for Bayesian density estimation models in the context of three real datasets that have previously been studied.Third, we develop a statistical technique to quantify brain tumor heterogeneity via smoothed voxel-value PDFs. This novel representation allows us to capture detailed tumor characteristics that were undetectable by former approaches. We develop tools for comparing tumor profiles across patients, which can be used in conjunction with standard clustering approaches. We also use a Bayesian model-based approach to consider the notion of cluster enrichment. Our analyses of The Cancer Genome Atlas (TCGA)-based glioblastoma multiforme dataset reveal two clusters of patients with marked differences in tumor morphology, genomic characteristics, and prognostic clinical outcomes.Finally, we close with a brief summary of our contributions and a discussion of open problems, which we plan to explore in the future.
일반주제명Statistics.
Artificial intelligence.
Electrical engineering.
언어영어
바로가기URL : 이 자료의 원문은 한국교육학술정보원에서 제공합니다.

서평(리뷰)

  • 서평(리뷰)

태그

  • 태그

나의 태그

나의 태그 (0)

모든 이용자 태그

모든 이용자 태그 (0) 태그 목록형 보기 태그 구름형 보기
 
로그인폼