Description
Item calibration is the process of estimating the parameters of test items or questionswhen item response theory (IRT) is used to analyze test response data, provide a score
for each test-taker, and/or facilitate computerized adaptive testing (CAT). CAT is a
modern technology for test administration where test items are selected on the fly for
each examinee to tailor the test individually. The adaptive item selection algorithms
in CAT depend on known item parameters. Hence item calibration is a critical
component in CAT operations. The statistical process of estimating item parameters
depends on observed data generated by examinees responding to the items. The
most basic way to obtain response data for item calibration is by conducting a standalone
pretesting event where test-takers are recruited to take the test solely for the
purpose of collecting data for item calibration. Because that process can be costly and
time-consuming, online calibration techniques are invented to insert several pretest
items in a live test, so that response data are collected on the go. Given a pool
of pretest items to be calibrated, different approaches have been proposed to select
pretest items for each examinee, such as random selection, examine-centered selection,
and various item-centered selection methods. A common goal of most pretest item
selection approaches is to optimize the efficiency of the statistical estimation of the
item parameters. Hence the theories and techniques of optimal design in statistics
have been applied and extended for this application. Optimal design, in general,
involves identifying the most important variables that influence the outcome of the
experiment, and determining the optimal values of these factors that provides the
most information for estimating statistical model parameters. The main focus of this
dissertation is applying, extending, and evaluating variations of optimal restricted
design for online calibration for the 2-parameter logistic model. A simulation study
is conducted to compare the existing methods with variations of restricted optimal design using different criteria.
Details
Title
- Variation of Restricted Optimal Item Calibration for Computerized Adaptive Test
Contributors
- Zhang, Zhicui (Author)
- Zheng, Yi (Thesis advisor)
- Lan, Shiwei (Committee member)
- Reiser, Mark (Committee member)
- Wilson, Jeffrey (Committee member)
- Zhou, Shuang (Committee member)
- Arizona State University (Publisher)
Date Created
The date the item was original created (prior to any relationship with the ASU Digital Repositories.)
2024
Subjects
Resource Type
Collections this item is in
Note
- Partial requirement for: Ph.D., Arizona State University, 2024
- Field of study: Statistics