An Introduction to Bayesian Knowledge Tracing with pyBKT
Abstract
This study aims to introduce Bayesian Knowledge Tracing (BKT), a probabilistic model used in educational data mining to estimate learners’ knowledge states over time. It also provides a practical guide to estimating BKT models using the pyBKT library available in Python. The first section presents an overview of BKT by explaining its theoretical foundations and advantages in modeling individual learning processes. In the second section, we describe different variants of the standard BKT model based on item response theory (IRT). Next, we demonstrate the estimation of BKT with the pyBKT library in Python, outlining data pre-processing steps, parameter estimation, and model evaluation. Different cases of knowledge tracing tasks illustrate how BKT estimates learners’ knowledge states and evaluates prediction accuracy. The results highlight the utility of BKT in capturing learners’ knowledge states dynamically. We also show that the model parameters of BKT resemble the parameters from logistic IRT models.
Authors
Okan Bulut
University of Alberta
Jinnie Shin
University of Florida
jinnie.shin@coe.ufl.edu
Seyma N. Yildirim-Erbasli
Concordia University of Edmonton
Guher Gorgun
University of Alberta
swapnakumar@coe.ufl.edu
Zachary Pardos
University of California Berkeley
zp@berkeley.edu