Optimal Decision Trees For Interpretable Clustering with Constraints
Optimal Decision Trees For Interpretable Clustering with Constraints
Pouya Shati, Eldan Cohen, Sheila McIlraith
Proceedings of the Thirty-Second International Joint Conference on Artificial Intelligence
Main Track. Pages 2022-2030.
https://doi.org/10.24963/ijcai.2023/225
Constrained clustering is a semi-supervised task that employs a limited amount of labelled data, formulated as constraints, to incorporate domain-specific knowledge and to significantly improve clustering accuracy. Previous work has considered exact optimization formulations that can guarantee optimal clustering while satisfying all constraints, however these approaches lack interpretability. Recently, decision trees have been used to produce inherently interpretable clustering solutions, however existing approaches do not support clustering constraints and do not provide strong theoretical guarantees on solution quality. In this work, we present a novel SAT-based framework for interpretable clustering that supports clustering constraints and that also provides strong theoretical guarantees on solution quality. We also present new insight into the trade-off between interpretability and satisfaction of such user-provided constraints. Our framework is the first approach for interpretable and constrained clustering. Experiments with a range of real-world and synthetic datasets demonstrate that our approach can produce high-quality and interpretable constrained clustering solutions.
Keywords:
Constraint Satisfaction and Optimization: CSO: Constraint optimization
Constraint Satisfaction and Optimization: CSO: Satisfiabilty
Machine Learning: ML: Clustering