TrueLearn: A Python Library for Personalised Informational Recommendations with (Implicit) Feedback
Abstract
This work describes the TrueLearn Python library, which contains a family of online learning Bayesian models for building educational (or more generally, informational) recommendation systems. This family of models was designed following the "open learner" concept, using humanly-intuitive user representations. For the sake of interpretability and putting the user in control, the TrueLearn library also contains different representations to help end-users visualise the learner models, which may in the future facilitate user interaction with their own models. Together with the library, we include a previously publicly released implicit feedback educational dataset with evaluation metrics to measure the performance of the models. The extensive documentation and coding examples make the library highly accessible to both machine learning developers and educational data mining and learning analytic practitioners. The library and the support documentation with examples are available at https://truelearn.readthedocs.io/en/latest.
Cite
@article{arxiv.2309.11527,
title = {TrueLearn: A Python Library for Personalised Informational Recommendations with (Implicit) Feedback},
author = {Yuxiang Qiu and Karim Djemili and Denis Elezi and Aaneel Shalman and María Pérez-Ortiz and Sahan Bulathwela},
journal= {arXiv preprint arXiv:2309.11527},
year = {2023}
}
Comments
To be presented at the ORSUM workshop at RecSys 2023