Most current models of recognition memory fail to separately model item and person heterogeneity which makes it difficult to assess ability at the latent construct level and prevents the administration of adaptive tests. Here we propose to employ a General Condorcet Model for Recognition (GCMR) in order to estimate ability, response bias and item difficulty in dichotomous recognition memory tasks. Using a Bayesian modeling framework and MCMC inference, we perform 3 separate validation studies comparing GCMR to the Rasch model from IRT and the 2-High-Threshold (2HT) recognition model. First, two simulations demonstrate that recovery of GCMR ability estimates with varying sparsity and test difficulty is more robust and that estimates improve ...
The recognition heuristic (RH) is a simple strategy for probabilistic inference according to which r...
In this study, person parameter recoveries are investigated by retrofitting polytomous attribute cog...
Raven’s Standard Progressive Matrices (SPM) test and related matrix-based tests are widely applied m...
Most current models of recognition memory fail to separately model item and person heterogeneity whi...
A robust finding in recognition memory is that performance declines monotonically across test trials...
The theory of signal detection is convenient for measuring mnemonic ability in recognition memory pa...
Signal Detection models as well as the Two-High-Threshold model (2HTM) have been used successfully a...
The article presents Bayesian hierarchical modeling frameworks for two measurement models for visual...
The mirror effect – a phenomenon whereby a manipulation produces opposite effects onhit and false al...
Swets, Tanner Jr., and Birdsall (1961) proposed a 4-alternative forced-choice task with two choices ...
Manipulations of encoding strength and stimulus class can lead to a simultaneous increase in hits an...
Inferences on ability in item response theory (IRT) have been mainly based on item responses while r...
Copyright © 2008 Elsevier Inc. All rights reserved.Recognition memory experiments are an important s...
This paper addresses one of the fundamental problems en-countered in performance prediction for obje...
The question of whether recognition memory should be measured assuming continuous memory strength (s...
The recognition heuristic (RH) is a simple strategy for probabilistic inference according to which r...
In this study, person parameter recoveries are investigated by retrofitting polytomous attribute cog...
Raven’s Standard Progressive Matrices (SPM) test and related matrix-based tests are widely applied m...
Most current models of recognition memory fail to separately model item and person heterogeneity whi...
A robust finding in recognition memory is that performance declines monotonically across test trials...
The theory of signal detection is convenient for measuring mnemonic ability in recognition memory pa...
Signal Detection models as well as the Two-High-Threshold model (2HTM) have been used successfully a...
The article presents Bayesian hierarchical modeling frameworks for two measurement models for visual...
The mirror effect – a phenomenon whereby a manipulation produces opposite effects onhit and false al...
Swets, Tanner Jr., and Birdsall (1961) proposed a 4-alternative forced-choice task with two choices ...
Manipulations of encoding strength and stimulus class can lead to a simultaneous increase in hits an...
Inferences on ability in item response theory (IRT) have been mainly based on item responses while r...
Copyright © 2008 Elsevier Inc. All rights reserved.Recognition memory experiments are an important s...
This paper addresses one of the fundamental problems en-countered in performance prediction for obje...
The question of whether recognition memory should be measured assuming continuous memory strength (s...
The recognition heuristic (RH) is a simple strategy for probabilistic inference according to which r...
In this study, person parameter recoveries are investigated by retrofitting polytomous attribute cog...
Raven’s Standard Progressive Matrices (SPM) test and related matrix-based tests are widely applied m...