본문

서브메뉴

Framing Structural Equation Models as Bayesian Non-Linear Multilevel Regression Models- [electronic resource]
Содержание
Framing Structural Equation Models as Bayesian Non-Linear Multilevel Regression Models- [electronic resource]
자료유형  
 학위논문
Control Number  
0016935474
International Standard Book Number  
9798380183024
Dewey Decimal Classification Number  
310
Main Entry-Personal Name  
Uanhoro, James Ohisei.
Publication, Distribution, etc. (Imprint  
[S.l.] : The Ohio State University., 2021
Publication, Distribution, etc. (Imprint  
Ann Arbor : ProQuest Dissertations & Theses, 2021
Physical Description  
1 online resource(134 p.)
General Note  
Source: Dissertations Abstracts International, Volume: 85-03, Section: B.
General Note  
Advisor: O'Connell, Ann A.
Dissertation Note  
Thesis (Ph.D.)--The Ohio State University, 2021.
Restrictions on Access Note  
This item must not be sold to any third party vendors.
Summary, Etc.  
요약This dissertation is a collection of three papers. The first is a conceptual paper, followed by two data analysis papers. All three papers examine the connection between structural equation models and regression models, and how one may better learn, research and apply structural equation models when structural equation models are thought of as regression models. Each paper contains unique contributions.In the first paper, I focus on conceptual issues related to estimating structural equation models (SEMs) as Bayesian multilevel regression models. I review prevailing views on the equivalence of the two model classes (SEM and multilevel regression), and show how a Bayesian approach allows for the unity of both model classes. Adopting a Bayesian approach introduces additional considerations for estimating SEMs which I review. Additionally, I lay out linear regression model specifications that are directly equivalent to commonplace SEMs. Finally, the paper ends with a discussion of open issues in SEMs that a Bayesian multilevel regression approach to SEMs more readily solves.The goal of the second paper is to frame structural equation models (SEMs) as Bayesian multilevel regression models using the example of a unidimensional confirmation factor model. Framing SEMs as Bayesian regression models provides an alternative approach to understanding SEMs that can improve model transparency and enhance innovation during modeling. For demonstration, I analyze six indicators of living standards data from 101 countries. I show how the unidimensional confirmatory factor analysis (CFA) with congeneric indicators is a nonlinear multilevel regression model. I fit this model using Bayesian estimation and conduct model diagnostics from the regression perspective. The model diagnostics identify misspecification that standard SEM misfit statistics are unable to detect and I extend the congeneric model to accommodate the unique features of the data under study. I also provide extensive guidance on prior specification, which is relevant for estimating complex regression models such as these. I end with discussion of the implications of a regression approach to modeling these data and data used in SEMs more broadly.In the third paper, I turn to bounded count indicators. Such indicators are common in the study of rare behaviours - I develop structural equation models for such indicators. The models are developed as Bayesian non-linear multilevel regression models; I assume the indicators are beta-binomial variables and jointly model the location and ICC of the indicators, recommending latent variables for both parameters. Furthermore, I present an interval-censoring extension to the developed models to be used when binned or coarsened versions of the indicators are available in place of the true counts. I show that the models can recover population parameters using simulated data, and show how to perform a complete analysis using data from the Irish longitudinal study on ageing.Taken together, the papers form the beginnings of a syllabus on the dissertation topic. Ultimately, the papers demonstrate that to do better at structural equation modeling, one needs to better understand regression modeling.
Subject Added Entry-Topical Term  
Statistics.
Subject Added Entry-Topical Term  
Quantitative psychology.
Subject Added Entry-Topical Term  
Mathematics education.
Index Term-Uncontrolled  
Structural equation modeling
Index Term-Uncontrolled  
Bayesian data analysis
Index Term-Uncontrolled  
Multilevel regression
Index Term-Uncontrolled  
Confirmatory factor analysis
Added Entry-Corporate Name  
The Ohio State University Educational Studies
Host Item Entry  
Dissertations Abstracts International. 85-03B.
Host Item Entry  
Dissertation Abstract International
Electronic Location and Access  
로그인을 한후 보실 수 있는 자료입니다.
Control Number  
joongbu:642907
New Books MORE
최근 3년간 통계입니다.

Подробнее информация.

  • Бронирование
  • 캠퍼스간 도서대출
  • 서가에 없는 책 신고
  • моя папка
материал
Reg No. Количество платежных Местоположение статус Ленд информации
TQ0028821 T   원문자료 열람가능/출력가능 열람가능/출력가능
마이폴더 부재도서신고

* Бронирование доступны в заимствований книги. Чтобы сделать предварительный заказ, пожалуйста, нажмите кнопку бронирование

해당 도서를 다른 이용자가 함께 대출한 도서

Related books

Related Popular Books

도서위치