Date
Publisher
arXiv
One of the largest drivers of social inequality is unequal access to personal
tutoring, with wealthier individuals able to afford it, while the majority
cannot. Affordable, effective AI tutors offer a scalable solution. We focus on
adaptive learning, predicting whether a student will answer a question
correctly, a key component of any effective tutoring system. Yet many platforms
struggle to achieve high prediction accuracy, especially in data-sparse
settings. To address this, we release the largest open dataset of
professionally marked formal mathematics exam responses to date. We introduce a
probabilistic modelling framework rooted in Item Response Theory (IRT) that
achieves over 80 percent accuracy, setting a new benchmark for mathematics
prediction accuracy of formal exam papers. Extending this, our collaborative
filtering models incorporate topic-level skill profiles, but reveal a
surprising and educationally significant finding, a single latent ability
parameter alone is needed to achieve the maximum predictive accuracy. Our main
contribution though is deriving and implementing a novel discrete variational
inference framework, achieving our highest prediction accuracy in low-data
settings and outperforming all classical IRT and matrix factorisation
baselines.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
