Bilişsel Tanı Ve Çok Boyutlu Madde Tepki Kuramı Modellerinin Karşılıklı Uyumlarının İncelenmesi
Özet
In this study
,
interchangeable use of cognitive diagnosis
models (CDM) and
multidimensional item response theory (MIRT) models, which have common
features, were investigated
.
T
his
study can be considered
as
a retrofitting study
,
which concentrates on the accuracy of estimated person
parameter
s
to the
ir
true
level
s
.
To this end,
a
polytomous
attribute CDM, which is referred to as
fully
-
additive
model (fA
-
M) with features close to
MIRT
,
has been
proposed.
In the study, polytomous generalized deterministic input noisy and gate (pG
-
DINA)
and fA
-
M models from CDMs and 2PL MIRT models were used. By manipulating
the
item
discrimination index, the ratio of
item
structure
of test
, the test length
,
and
the correlat
ion between the abilities
;
54 conditions
formed for compensatory and
non
-
compensatory cases. Therefore, for
each model,
a total of
108 data sets were
generated
under
compensatory and non
-
compensatory approach
es. T
wo
dimension
al
MIRT structure
was
organized
as two
attributes
with four levels for
CDM
cases
.
Continuous
person
parameter
s
in
MIRT
was
categorized
using
cut
-
off scores
to make it
compatible with
CDM
.
Correct classification rates of person parameters
by the models were obtained for each dataset.
The
study was
characterized
with
two
sub
-
questions
.
The first was concerned with
retrofitting
CDM
to
MIRT
, which includes the analysis of
MIRT data; and the other
was concerned with
the
retrofitting
MIRT to CDM
by
analysis of
CD
M data.
In both
sub
-
questions
,
the effect of the
conditions
to results
was similar. In conclusion, it
was seen that the increase in test length was the strongest factor that led to an
increase in
person
parameter accuracy.
The
item
discrimination index
and
the ratio
of
item
structure
of test
followed
the
test length
, respectively.
The presence of a
positive correlation between the abilit
ies had limited positive
influence
to
the
accuracy of
person
parameters
when
compared to other factors.
In the first
sub
-
question
involving
retrofitti
ng CD
M, the difference between the results of the
analysis of the compensator
y and the non
-
compensatory data wa
s very small
.
x
However,
in the second
sub
-
question
involving the adaptation of the
MIRT, it wa
s
seen that this difference
wa
s
larger and
favor
ing
the compensatory data analysis.
When the results are considered in terms of models, as expected
,
all data types
we
re estimated
with
highest accuracy by the
true
models
.
In the
retrofitting
cases
,
accuracy rates were close to true model estimation accuracy
levels when MIRT
and
pG
-
DINA data
analyzed
by fA
-
M and fA
-
M data
analyzed
by
MIRT.
To obtain
cognitive diagnostic
information
from the
MIRT
data, fA
-
M
may
be
a convenient
tool
if
abilities
can be transformed into
polytomous attributes
.
Likewise, if continuous
ability score is desired from fA
-
M data, MIRT application is recommended if
attributes can be converted into dimensions. In addition to these results, lower
correct classification rates were obtained when pG
-
DINA data were retrofit
ted to
MIRT, and vice versa. Furthermore, a
nalysis of
f
A
-
M data with pG
-
DINA resulted in
lower
accuracy
rate.
High classification accuracy rates of fA
-
M when MIRT and pG
-
DINA data fitted may
be considered as success indicators of the proposed model. Future
studies may
propose new models using the success
probability
computation
develop
ed for fA
-
M
.
In this respect,
f
A
-
M
may
lead
to a new
model family
yielding
successful
estimations for various
data
sets with high model
-
data fit.