Towards a Computational Model of Why Some Students Learn Faster than Others
Li, Nan (Carnegie Mellon University) | Matsuda, Noboru (Carnegie Mellon University) | Cohen, William (Carnegie Mellon University) | Koedinger, Kenneth
Learners that have better metacognition acquire knowledge faster than others who do not. If we had better models of such learning, we would be able to build a better metacognitive educational system. In this paper, we propose a computational model that uses a probabilistic context free grammar induction algorithm yielding metacognitive learning by acquiring deep features to assist future learning. We discuss the challenges of integrating this model into a synthetic student, and possible future studies in using this model to better understand human learning. Preliminary results suggest that both stronger prior knowledge and a better learning strategy can speed up the learning process. Some model variations generate human-like error pattern.
Nov-5-2010
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