English

Sparse Factor Analysis for Learning and Content Analytics

Machine Learning 2015-01-20 v2 Machine Learning Optimization and Control Applications

Abstract

We develop a new model and algorithms for machine learning-based learning analytics, which estimate a learner's knowledge of the concepts underlying a domain, and content analytics, which estimate the relationships among a collection of questions and those concepts. Our model represents the probability that a learner provides the correct response to a question in terms of three factors: their understanding of a set of underlying concepts, the concepts involved in each question, and each question's intrinsic difficulty. We estimate these factors given the graded responses to a collection of questions. The underlying estimation problem is ill-posed in general, especially when only a subset of the questions are answered. The key observation that enables a well-posed solution is the fact that typical educational domains of interest involve only a small number of key concepts. Leveraging this observation, we develop both a bi-convex maximum-likelihood and a Bayesian solution to the resulting SPARse Factor Analysis (SPARFA) problem. We also incorporate user-defined tags on questions to facilitate the interpretability of the estimated factors. Experiments with synthetic and real-world data demonstrate the efficacy of our approach. Finally, we make a connection between SPARFA and noisy, binary-valued (1-bit) dictionary learning that is of independent interest.

Keywords

Cite

@article{arxiv.1303.5685,
  title  = {Sparse Factor Analysis for Learning and Content Analytics},
  author = {Andrew S. Lan and Andrew E. Waters and Christoph Studer and Richard G. Baraniuk},
  journal= {arXiv preprint arXiv:1303.5685},
  year   = {2015}
}
R2 v1 2026-06-21T23:46:46.599Z