PhD Defense by Elizabeth Williams

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Event Details
  • Date/Time:
    • Wednesday August 23, 2017 - Thursday August 24, 2017
      1:00 pm - 2:59 pm
  • Location: JS Coon 148
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Summaries

Summary Sentence: Estimation of Parameters in the Generalized Graded Unfolding Model Using a Genetic Algorithm

Full Summary: No summary paragraph submitted.

Name: Elizabeth Williams

Date: Wednesday, August 23rd, 2017

Time: 1:00pm

Location: JS Coon 148

 

Advisors:

Professor James S. Roberts, Ph.D. (Georgia Tech)

 

Thesis Committee Members:

Professor Rick Thomas, Ph.D. (Georgia Tech)

Professor Susan Embretson, Ph.D. (Georgia Tech)

Professor Daniel Spieler, Ph.D. (Georgia Tech)

Professor Brian Habing, Ph.D. (University of South Carolina)

 

Title : Estimation of Parameters in the Generalized Graded Unfolding Model Using a Genetic Algorithm

 

In the current study, a genetic algorithm was used in conjunction with the expectation-maximization algorithm to estimate parameters in a polytomous unfolding IRT model known as the generalized graded unfolding model (GGUM). One advantage of using a genetic algorithm for IRT parameter estimation is that this global optimization procedure is not easily affected by local maxima in the likelihood function – a condition that is often encountered in unfolding IRT models including the GGUM. Additionally, because genetic algorithms do not use derivatives to maximize the likelihood function, it is computationally simple and could be deployed efficiently with higher dimensional data. The focus of this study was to implement the genetic algorithm in the context of the GGUM, and then evaluate the speed and accuracy of the resulting parameter estimates   Program development was done with the R computer language, and the efficacy of estimates was examined with simulation methods, which systematically vary sample size, test length and number of response categories.  The resulting estimation strategy was also illustrated with real data from an abortion attitude questionnaire. 

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Phd Defense
Status
  • Created By: Tatianna Richardson
  • Workflow Status: Published
  • Created On: Aug 15, 2017 - 2:00pm
  • Last Updated: Aug 15, 2017 - 2:00pm