Description Usage Format Details Source References Examples
This data set contains the estimated item difficuty parameters for the
KB36
data, assuming a 1PL model. Two sets of parameters estimates for test forms
X
and Y
are available: one that results from a fit assuming the traditional
logistic link, and one which comes from the fit using a cloglog (asymmetric) link.
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A list of 2 elements containing item (difficulty) parameters estimates for test
forms X
and Y
under the logistic-link model (b.logistic
), and under
the cloglog-link model (b.cloglog
)
This data set is used to illustrate the characteristic curve methods (Haebara and Stocking-Lord) which can use an asymmetric cloglog ICC for the calculations, as described in Estay (2012).
A 1PL model using both logistic and cloglog link can be fitted using the lmer()
function in the lme4
R package (see De Boeck et. al, 2011 for details).
The item parameter estimates for the 1PL model with logistic link are also shown in Table 6.13 of Kolen and Brennan (2004).
De Boeck, P., Bakker, M., Zwitser, R., Nivard, M., Hofman, A.,Tuerlinckx, F., Partchev, I.
(2011). The Estimation of Item Response Models with the lmer
Function from the
lme4 Package in R
. Journal of Statistical Software, 39(12), 1-28.
Kolen, M., and Brennan, R. (2004). Test Equating, Scaling and Linking. New York, NY: Springer-Verlag.
Estay, G. (2012). Characteristic Curves Scale Transformation Methods Using Asymmetric ICCs for IRT Equating. Unpublished MSc. Thesis. Pontificia Universidad Catolica de Chile
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