Deep Knowledge Tracing

Chris Piech(Stanford University), Spencer, Jonathan(Stanford University), Jonathan Huang(Google (United States)), Surya Ganguli(Stanford University), Mehran Sahami(Stanford University), Leonidas Guibas(Stanford University), Jascha Sohl‐Dickstein(Khan Academy)
arXiv (Cornell University)
June 19, 2015
Cited by 630Open Access
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Abstract

Knowledge tracing---where a machine models the knowledge of a student as they interact with coursework---is a well established problem in computer supported education. Though effectively modeling student knowledge would have high educational impact, the task has many inherent challenges. In this paper we explore the utility of using Recurrent Neural Networks (RNNs) to model student learning. The RNN family of models have important advantages over previous methods in that they do not require the explicit encoding of human domain knowledge, and can capture more complex representations of student knowledge. Using neural networks results in substantial improvements in prediction performance on a range of knowledge tracing datasets. Moreover the learned model can be used for intelligent curriculum design and allows straightforward interpretation and discovery of structure in student tasks. These results suggest a promising new line of research for knowledge tracing and an exemplary application task for RNNs.


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