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Tuning Fairness by Balancing Target Labels.

Thomas Kehrenberg1, Zexun Chen1, Novi Quadrianto1,2

  • 1Predictive Analytics Lab (PAL), Informatics, University of Sussex, Brighton, United Kingdom.

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Summary
This summary is machine-generated.

This study introduces a novel method to mitigate bias in machine learning models by using a latent target output, promoting fairness in AI systems and enhancing public trust.

Keywords:
algorithmic biasdemographic parityequality of opportunityfairnessmachine learning

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Area of Science:

  • Artificial Intelligence
  • Machine Learning Ethics
  • Algorithmic Fairness

Background:

  • Machine learning models are increasingly deployed in critical decision-making processes.
  • Ensuring fairness in these models is crucial for public trust and equitable outcomes.
  • Bias in machine learning can lead to discriminatory outputs, disproportionately affecting certain demographic groups.

Purpose of the Study:

  • To develop a unified framework for mitigating bias in machine learning outputs.
  • To address fairness concerns in applications like loan approvals and job candidate selection.
  • To provide a more intuitive and practical approach to controlling algorithmic fairness.

Main Methods:

  • Introduced a latent target output within probabilistic models to control bias.
  • Formulated fairness as a marginalization problem, avoiding complex constrained optimization.
  • Unified several group fairness notions, including Demographic Parity and Equality of Opportunity.

Main Results:

  • The proposed latent target output formulation effectively controls bias in machine learning outputs.
  • The marginalization approach simplifies fairness implementation, allowing reuse of standard toolboxes.
  • Directly varying fairness target rates offers intuitive control over the level of fairness achieved.

Conclusions:

  • The latent target output method provides a unified and practical framework for achieving group fairness in machine learning.
  • This approach offers a more interpretable and controllable alternative to existing methods relying on indirect parameters.
  • Implementing this method can enhance the fairness of AI systems, fostering greater public confidence.