Gradient Reversal against Discrimination - A Fair Neural Network Learning Approach.

arXiv: Machine Learning(2018)

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摘要
No methods currently exist for inducing fairness in arbitrary neural network architectures. In this work we introduce GRAD, a new and simplified method for producing fair neural networks that can be used for auto-encoding fair representations or directly with predictive networks. It is easy to implement and add to existing architectures, has only one (insensitive) hyper-parameter, and provides improved individual and group fairness. We use the flexibility of GRAD to demonstrate multi-attribute protection.
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关键词
Task analysis,Neural networks,Logistics,Prototypes,Feature extraction,Data models,Law
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