Sumon Biswas
Sumon Biswas
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Towards Understanding Fairness and its Composition in Ensemble Machine Learning
We comprehensively study popular real-world ensembles: bagging, boosting, stacking and voting. We have developed a benchmark of 168 ensemble models collected from Kaggle on four popular fairness datasets. We use existing fairness metrics to understand the composition of fairness. Our results show that ensembles can be designed to be fairer without using mitigation techniques. We also identify the interplay between fairness composition and data characteristics to guide fair ensemble design.
Usman Gohar
,
Sumon Biswas
,
Hridesh Rajan
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