Services on Demand
Journal
Article
Indicators
Cited by SciELO
Access statistics
Related links
Cited by Google
Similars in
SciELO
Similars in Google
Share
Opinión Jurídica
Print version ISSN 1692-2530On-line version ISSN 2248-4078
Abstract
ROSA, Alexandre Morais da and GUASQUE, Bárbara. Artificial Intelligence, Algorithm Biases and Racisms: The Dark Side of Algorithm Justice. Opin. jurid. [online]. 2024, vol.23, n.50, a49. Epub Dec 06, 2024. ISSN 1692-2530. https://doi.org/10.22395/ojum.v23n50a49.
This article aims to identify some negative externalities arising from the failure to comply with specific ethical standards in Artificial Intelligence (AI) models. This study highlights the importance of paying rigorous attention to the data used in building AI models, such as listing potential solutions to reduce the incidence of skewed algorithms and mitigate their harmful consequences. This article followed an exploratory descriptive methodology, addressing practical cases, and turned to bibliographic review as a technical procedure. The main finding is that skewed algorithms cause disastrous social consequences, violating fundamental rights and actings as catalyzers, increasing and perpetuating prejudice and segregation inherent to their society, thus contributing to the structural racism that permeates society and the criminal justice system.
Keywords : artificial intelligence; algorithm skews; justice system; racism; discrimination; fundamental rights.












