Back to Search Start Over

Interpretable and Fair Boolean Rule Sets via Column Generation

Authors :
Lawless, Connor
Dash, Sanjeeb
Gunluk, Oktay
Wei, Dennis
Source :
Journal of Machine Learning Research 2023 Volume 24, Number 229, Pages 1-50
Publication Year :
2021

Abstract

This paper considers the learning of Boolean rules in disjunctive normal form (DNF, OR-of-ANDs, equivalent to decision rule sets) as an interpretable model for classification. An integer program is formulated to optimally trade classification accuracy for rule simplicity. We also consider the fairness setting and extend the formulation to include explicit constraints on two different measures of classification parity: equality of opportunity and equalized odds. Column generation (CG) is used to efficiently search over an exponential number of candidate rules without the need for heuristic rule mining. To handle large data sets, we propose an approximate CG algorithm using randomization. Compared to three recently proposed alternatives, the CG algorithm dominates the accuracy-simplicity trade-off in 8 out of 16 data sets. When maximized for accuracy, CG is competitive with rule learners designed for this purpose, sometimes finding significantly simpler solutions that are no less accurate. Compared to other fair and interpretable classifiers, our method is able to find rule sets that meet stricter notions of fairness with a modest trade-off in accuracy.<br />Comment: arXiv admin note: substantial text overlap with arXiv:2107.01325, arXiv:1805.09901

Details

Database :
arXiv
Journal :
Journal of Machine Learning Research 2023 Volume 24, Number 229, Pages 1-50
Publication Type :
Report
Accession number :
edsarx.2111.08466
Document Type :
Working Paper