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A. Introduction to IRT
What is IRT?Item response theory relates characteristics of
items (item parameters) and characteristics of individuals (latent
traits) to the probability of a positive response. A variety of IRT
models have been developed for dichotomous and polytomous data. In
each case, the probability of answering correctly or endorsing a
particular response category can be represented graphically by an
item (option) response function (IRF/ORF). These functions represent
the nonlinear regression of a response probability on a latent
trait, such as conscientiousness or verbal ability (Hulin, Drasgow,
& Parsons, 1983).
Why is IRT useful?IRT provides several advantages over
classical test theory (CTT) methods for constructing tests and
examining measurement equivalence.
Unlike CTT item
statistics, which depend fundamentally on the subset of items and
persons examined, IRT item and person parameters are invariant. This
makes it possible to examine the contribution of items individually
as they are added and removed from a test. Moreover, IRT allow
researchers to calculate conditional standard errors of measurement
based on a test information function, rather than assuming an
average standard error across all trait levels as in CTT. This
allows researchers to select items that provide maximum measurement
precision in a particular ability/trait range (Hulin et al.,
1983).
Second, IRT allows researchers to conduct rigorous
tests of measurement equivalence across experimental groups. This is
particularly important in cross-cultural research where groups are
expected to show mean differences on the attribute being measured.
IRT methods can distinguish item bias from true differences on the
attribute measured, whereas CTT methods cannot (Kim, Cohen, &
Park, 1995).
IRT also facilitates computer adaptive testing.
Items can be selected that provide the most information for each
examinee. This can dramatically reduce time and costs associated
with test administration (Hulin et al., 1983).
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