Toward a Reflective SimStudent: Using Experience to Avoid Generalization Errors
Proceedings of the AIED 2013 Workshop on Simulated Learners
2013
Abstract
Simulated learner systems are used for many purposes ranging from computational models of learning to teachable agents. To support these varying applications, some simulated learner systems have relied heavily on machine learning to achieve the necessary generality. However, these efforts have resulted in simulated learners that sometimes make generalization errors that the humans they model never make. In this paper, we discuss an approach to reducing these kinds of generalization errors by having the simulated learner system reflect before acting. During these reflections, the system uses background knowledge to recognize implausible actions as incorrect without having to receive external feedback. The result of this metacognitive approach is a system that avoids implausible errors and requires less instruction. We discuss this approach in the context of SimStudent, a computational model of human learning that acquires a production rule model from demonstrations.
BibTeX
@inproceedings{maclellan-aied-2013-ws,
title = {Toward a Reflective SimStudent: Using Experience to Avoid Generalization Errors},
author = {MacLellan, Christopher J. and Matsuda, Noboru and Koedinger, Kenneth R.},
booktitle = {Proceedings of the AIED 2013 Workshop on Simulated Learners},
year = {2013},
}
