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Minimax Pareto Fairness: A Multi Objective Perspective
Natalia Martinez
, Martin Bertran
,
Guillermo Sapiro
Research output
:
Contribution to journal
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Conference article
›
peer-review
60
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Scopus citations
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Keyphrases
Proposed Methodology
100%
Gap Model
100%
Minimax
100%
Pareto Efficiency
100%
Multi-objective Optimization Problem
100%
Optimization Algorithm
100%
Pareto
100%
Minimax Risk
100%
Misclassification Error
100%
Credit Risk
100%
Zero-gap
100%
Deep Neural Network
100%
Patient Mortality
100%
Fairness Criteria
100%
ICU Patients
100%
Sensitive Attribute
100%
Group Fairness
100%
Case Classification
100%
Group Risk
100%
Imbalanced Classification
100%
Sensitive Groups
100%
Skin Lesion Classification
100%
Computer Science
Optimization Problem
100%
Case Study
100%
Multiobjective
100%
Pareto Efficient
100%
Classification Problem
100%
Optimization Algorithm
100%
Multi-Objective Optimization
100%
Classification Error
100%
Deep Neural Network
100%
Sensitive Attribute
100%
Mathematics
Minimax
100%
Worst Case
50%
Classification Problem
50%
Credit Risk
50%
Deep Neural Network
50%
Sensitive Group
50%
Multiobjective Optimization Problem
50%