A step toward building a unified framework for managing AI bias

Document Type

Article

Publication Date

10-1-2023

Abstract

Integrating artificial intelligence (AI) has transformed living standards. However, AI's efforts are being thwarted by concerns about the rise of biases and unfairness. The problem advocates strongly for a strategy for tackling potential biases. This article thoroughly evaluates existing knowledge to enhance fairness management, which will serve as a foundation for creating a unified framework to address any bias and its subsequent mitigation method throughout the AI development pipeline. We map the software development life cycle (SDLC), machine learning life cycle (MLLC) and cross industry standard process for data mining (CRISP-DM) together to have a general understanding of how phases in these development processes are related to each other. The map should benefit researchers from multiple technical backgrounds. Biases are categorised into three distinct classes; pre-existing, technical and emergent bias, and subsequently, three mitigation strategies; conceptual, empirical and technical, along with fairness management approaches; fairness sampling, learning and certification. The recommended practices for debias and overcoming challenges encountered further set directions for successfully establishing a unified framework.

Keywords

Algorithmic bias, Fairness management, Bias mitigation strategy, Data-driven AI system, Fairness in data mining

Divisions

fsktm

Funders

Higher Education Commission of Pakistan

Publication Title

PeerJ Computer Science

Volume

9

Publisher

PeerJ

Publisher Location

341-345 OLD ST, THIRD FLR, LONDON, EC1V 9LL, ENGLAND

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