Publication | Closed Access
OmniFair: A Declarative System for Model-Agnostic Group Fairness in Machine Learning
28
Citations
30
References
2021
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningFair Ml ModelsDiscriminationFairness In Natural Language ProcessingMl ModelsModel-agnostic Group FairnessData ScienceBiasFair Data PrincipleMechanism DesignStatisticsAlgorithmic BiasFair Resource AllocationData PrivacyDisparate ImpactComputer ScienceFair DivisionDeclarative SystemDataset BiasAutomated ReasoningAlgorithmic FairnessCost-sensitive Machine Learning
Machine learning (ML) is increasingly being used to make decisions in our society. ML models, however, can be unfair to certain demographic groups (e.g., African Americans or females) according to various fairness metrics. Existing techniques for producing fair ML models either are limited to the type of fairness constraints they can handle (e.g., preprocessing) or require nontrivial modifications to downstream ML training algorithms (e.g., in-processing).
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