A Review of Bias and Fairness in Artificial Intelligence.

Authors

  • Rubén González Sendino Universidad Politécnica de Madrid.
  • Emilio Serrano Universidad Politécnica de Madrid.
  • Javier Bajo Universidad Politécnica de Madrid.
  • Paulo Novais University of Minho.

DOI:

https://doi.org/10.9781/ijimai.2023.11.001

Keywords:

Bias, Fairness, Responsible Artificial Intelligence

Abstract

Automating decision systems has led to hidden biases in the use of artificial intelligence (AI). Consequently, explaining these decisions and identifying responsibilities has become a challenge. As a result, a new field of research on algorithmic fairness has emerged. In this area, detecting biases and mitigating them is essential to ensure fair and discrimination-free decisions. This paper contributes with: (1) a categorization of biases and how these are associated with different phases of an AI model’s development (including the data-generation phase); (2) a revision of fairness metrics to audit the data and AI models trained with them (considering agnostic models when focusing on fairness); and, (3) a novel taxonomy of the procedures to mitigate biases in the different phases of an AI model’s development (pre-processing, training, and post-processing) with the addition of transversal actions that help to produce fairer models.

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Published

2024-12-01