A general diagnostic modelling framework for forced-choice assessments
Date
2025-04-23Author
Estado
info:eu-repo/semantics/publishedVersionMetadata
Show full item recordAbstract
. Diagnostic classification modelling (DCM) is a family of
restricted latent class models often used in educational
settings to assess students' strengths and weaknesses.
Recently, there has been growing interest in applying
DCM to noncognitive traits in fields such as clinical and
organizational psychology, as well as personality profiling.
To address common response biases in these assessments,
such as social desirability, Huang (2023, Educational and
Psychological Measurement, 83, 146) adopted the forced-choice
(FC) item format within the DCM framework, developing
the FC-DCM. This model assumes that examinees with
no clear preference for any statements in an FC block will
choose completely at random. Additionally, the unique
parametrization of the FC-DCM poses challenges for
integration with established DCM frameworks in the
literature. In the present study, we enhance the capabilities
of DCM by introducing a general diagnostic framework
for FC assessments. We present an adaptation of the GDINA model to accommodate FC responses. Simulation
results show that the G-DINA model provides accurate
classifications, item parameter estimates and attribute
correlations, outperforming the FC-DCM in realistic
scenarios where item discrimination varies. A real FC
assessment example further illustrates the better model fit
of the G-DINA. Practical recommendations for using the
FC format in diagnostic assessments of noncognitive traits
are provided.
A general diagnostic modelling framework for forced-choice assessments
Tipo de Actividad
Artículos en revistasISSN
0007-1102Palabras Clave
.diagnostic classification, forced-choice assessments, latent class, noncognitive traits