Abstract. The validation of models for skills assessment is often conducted by using simulated students because their skills mastery can be predefined. Student performance data is generated according to the predefined skills and models are trained over this data. The accuracy of model skill predictions can thereafter be verified by comparing the predefined skills with the predicted ones. We investigate the faithfulness of different methods for generating simulated data by comparing the predictive performance of a Bayesian student model over real vs. simulated data for which the parameters are set to reflect those of the real data as closely as possible. A similar performance suggests that the simulated data is more faithful to the real data than for a dissimilar performace. The results of our simulations show that the latent trait model (IRT) is a relatively good candidate to simulate student performance data, and that simple methods that solely replicate mean and standard deviation di...
Michel C. Desmarais, Ildikó Pelczer