Description IRT classification uses the probability that candidates of a given ability, will answer correctly questions of a specified difficulty to calculate the probability of their achieving every possible score in a test. Due to the IRT assumption of conditional independence (that is every answer given is assumed to depend only on the latent trait being measured) the probability of candidates achieving these potential scores can be expressed by multiplication of probabilities for item responses for a given ability. Once the true score and the probabilities of achieving all other scores have been determined for a candidate the probability of their score lying in the same category as that of their true score (classification accuracy), or ...
This study explored the relationship between successful guessing and latent ability in IRT models. A...
IRT, also referred as “modern test theory”, offers many advantages over CTT-based methods in test de...
This article presents a characteristic curve procedure for computing transformations of the item res...
Description IRT classification uses the probability that candidates of a given ability, will answer ...
The R package classify presents a number of useful functions which can be used to estimate the class...
This thesis investigated the correctness of the classification consistency (CC) and classification a...
As demanded by the No Child Left Behind (NCLB) legislation, state-mandated testing has increased dra...
An important feature of recent large-scale performance assessments has been the reporting of pupil a...
This presentation focuse son multiple-choice items without any control or correction for guessing. M...
sampler, posterior predictive checks A hierarchical IRT model is proposed for mastery classification...
Rudner (2001, 2005) proposed a method for evaluating classification accuracy in tests based on item ...
Model-data-fit of item response theory (IRT)models is generally assessed by comparing observed perfo...
Paper Session, E8: Test Design isssues with Diagnostic Classification ModelsAs the accuracy and cons...
The identifiability and estimability of the parameters for the Unified Cognitive/IRT Model are studi...
There are two main lines of research in estimating classification accuracy (CA) and classification c...
This study explored the relationship between successful guessing and latent ability in IRT models. A...
IRT, also referred as “modern test theory”, offers many advantages over CTT-based methods in test de...
This article presents a characteristic curve procedure for computing transformations of the item res...
Description IRT classification uses the probability that candidates of a given ability, will answer ...
The R package classify presents a number of useful functions which can be used to estimate the class...
This thesis investigated the correctness of the classification consistency (CC) and classification a...
As demanded by the No Child Left Behind (NCLB) legislation, state-mandated testing has increased dra...
An important feature of recent large-scale performance assessments has been the reporting of pupil a...
This presentation focuse son multiple-choice items without any control or correction for guessing. M...
sampler, posterior predictive checks A hierarchical IRT model is proposed for mastery classification...
Rudner (2001, 2005) proposed a method for evaluating classification accuracy in tests based on item ...
Model-data-fit of item response theory (IRT)models is generally assessed by comparing observed perfo...
Paper Session, E8: Test Design isssues with Diagnostic Classification ModelsAs the accuracy and cons...
The identifiability and estimability of the parameters for the Unified Cognitive/IRT Model are studi...
There are two main lines of research in estimating classification accuracy (CA) and classification c...
This study explored the relationship between successful guessing and latent ability in IRT models. A...
IRT, also referred as “modern test theory”, offers many advantages over CTT-based methods in test de...
This article presents a characteristic curve procedure for computing transformations of the item res...