Fairness-enhancing interventions in stream classification

@article{Iosifidis2019FairnessenhancingII,
  title={Fairness-enhancing interventions in stream classification},
  author={Vasileios Iosifidis and Thi Ngoc Han Tran and Eirini Ntoutsi},
  journal={ArXiv},
  year={2019},
  volume={abs/1907.07223}
}
  • Vasileios Iosifidis, Thi Ngoc Han Tran, Eirini Ntoutsi
  • Published 2019
  • Computer Science, Mathematics
  • ArXiv
  • The wide spread usage of automated data-driven decision support systems has raised a lot of concerns regarding accountability and fairness of the employed models in the absence of human supervision. Existing fairness-aware approaches tackle fairness as a batch learning problem and aim at learning a fair model which can then be applied to future instances of the problem. In many applications, however, the data comes sequentially and its characteristics might evolve with time. In such a setting… CONTINUE READING

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