Software Fairness Debt
- URL: http://arxiv.org/abs/2405.02490v1
- Date: Fri, 3 May 2024 21:45:48 GMT
- Title: Software Fairness Debt
- Authors: Ronnie de Souza Santos, Felipe Fronchetti, Savio Freire, Rodrigo Spinola,
- Abstract summary: This paper focuses on exploring the multifaceted nature of bias in software systems.
We identify the primary causes of fairness deficiency in software development and highlight their adverse effects on individuals and communities.
Our study contributes to a deeper understanding of fairness in software engineering and paves the way for the development of more equitable and socially responsible software systems.
- Score: 0.5249805590164902
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As software systems continue to play a significant role in modern society, ensuring their fairness has become a critical concern in software engineering. Motivated by this scenario, this paper focused on exploring the multifaceted nature of bias in software systems, aiming to provide a comprehensive understanding of its origins, manifestations, and impacts. Through a scoping study, we identified the primary causes of fairness deficiency in software development and highlighted their adverse effects on individuals and communities, including instances of discrimination and the perpetuation of inequalities. Our investigation culminated in the introduction of the concept of software fairness debt, which complements the notions of technical and social debt, encapsulating the accumulation of biases in software engineering practices while emphasizing the societal ramifications of bias embedded within software systems. Our study contributes to a deeper understanding of fairness in software engineering and paves the way for the development of more equitable and socially responsible software systems.
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