대구한의대학교 향산도서관

상세정보

부가기능

Evaluating the Effectiveness of the Expectation-Maximization (EM) Algorithm for Bayesian Network Calibration

상세 프로파일

상세정보
자료유형학위논문
서명/저자사항Evaluating the Effectiveness of the Expectation-Maximization (EM) Algorithm for Bayesian Network Calibration.
개인저자Tingir, Seyfullah.
단체저자명The Florida State University. Educational Psychology & Learning Systems.
발행사항[S.l.]: The Florida State University., 2019.
발행사항Ann Arbor: ProQuest Dissertations & Theses, 2019.
형태사항85 p.
기본자료 저록Dissertations Abstracts International 81-04A.
Dissertation Abstract International
ISBN9781085789288
학위논문주기Thesis (Ph.D.)--The Florida State University, 2019.
일반주기 Source: Dissertations Abstracts International, Volume: 81-04, Section: A.
Advisor: Almond, Russell.
이용제한사항This item must not be sold to any third party vendors.
요약Educators use various statistical techniques to explain relationships between latent and observable variables. One way to model these relationships is to use Bayesian networks as a scoring model. However, adjusting the conditional probability tables (CPT-parameters) to fit a set of observations is still a challenge when using Bayesian networks. A CPT provides the conditional probabilities of a single discrete variable with respect to other discrete variables. In general Bayesian networks, the CPTs that link the proficiency variable and observable outcomes are not necessarily monotonic, but they are often constrained to be monotonic in educational applications. The monotonicity constraint states that if an examinee shows an improvement on a proficiency variable (parent variable), the individual performance on an observable (child variable) should improve. For example, if a student has a higher writing skill, then this student is likely to score better on an essay task. For educational research, building parametric models (i.e., DiBello models) with the Expectation-Maximization algorithm provides monotonic conditional probability tables (CPT). This dissertation explored the effectiveness of the EM algorithm within the DiBello parameterization under different sample sizes, test forms, and item structures. The data generation model specifies two skill variables with a different number of items depending on the test forms. The outcome measures were the relative bias of the parameters to assess parameter recovery, Kullback-Leibler distance to evaluate the distance between CPTs, and Cohen's 觀 to assess classification agreement between data generation and estimation models. The simulation study results showed that a minimum sample size of 400 was sufficient to produce acceptable parameter bias and KL distance. A balanced distribution of simple and integrated type items produced less bias compared to an unbalanced item distribution. The parameterized EM algorithm stabilized the estimates for cells small sizes in CPTs, providing minimal KL distance values. However, the classification agreement between generated and estimated models was low.
일반주제명Educational tests & measurements.
Educational psychology.
Education.
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