1 code implementation • 24 Feb 2024 • Fan Yang, Pierre Le Bodic, Michael Kamp, Mario Boley
Gradient boosting of prediction rules is an efficient approach to learn potentially interpretable yet accurate probabilistic models.
no code implementations • 6 Jul 2022 • Ryan Hechenberger, Daniel Harabor, Muhammad Aamir Cheema, Peter J Stuckey, Pierre Le Bodic
The Euclidean shortest path problem (ESPP) is a well studied problem with many practical applications.
1 code implementation • 21 Jan 2021 • Mario Boley, Simon Teshuva, Pierre Le Bodic, Geoffrey I Webb
Rule ensembles are designed to provide a useful trade-off between predictive accuracy and model interpretability.
no code implementations • 19 Oct 2020 • Jinqiang Yu, Alexey Ignatiev, Pierre Le Bodic, Peter J. Stuckey
Decision lists are one of the most easily explainable machine learning models.
no code implementations • 29 Jul 2020 • Jinqiang Yu, Alexey Ignatiev, Peter J. Stuckey, Pierre Le Bodic
Earlier work on generating optimal decision sets first minimizes the number of rules, and then minimizes the number of literals, but the resulting rules can often be very large.