Author ORCID Identifier
https://orcid.org/0000-0003-1603-1357
Document Type
Article
Rights
Available under a Creative Commons Attribution Non-Commercial Share Alike 4.0 International Licence
Disciplines
6.4 ART
Abstract
It is well established that AI has a bias problem; however, black-boxed machine learning systems render it difficult to even understand and visualize the nature and extent of the problem, let alone find solutions. This paper discusses an artistic research approach toward highlighting AI bias and explores the aesthetic potential of machine learning through a case study of an AI artwork called #RiseandGrind.The artist trained a recurrent neural network on a dataset extracted from Twitter hashtags (#Riseandgrind and #Hustle),which were selected to represent a specific filter bubble (embodied neoliberal precarity) in order to produce a biased AI that generates tweets for a Twitter bot. This paper unpacks how this artwork makes visible the processes of machine learning in a playful and poetic way. The work reveals how the original filter bias is consolidated, amplified, shaped, and ultimately codified through this machine learning process. The AI is found to reproduce a cohesive worldview that, while reflecting the original data bias, further amplifies that bias through a process of flattening.
DOI
https://doi.org/10.21427/t7pp-e191
Recommended Citation
McGarrigle, C. (2021). Handouts don’t exist. Hustle or you don’t eat. Technological University Dublin. DOI: 10.21427/T7PP-E191
Publication Details
Media-N | The Journal of the New Media Caucus Fall 2021: Volume 17, Issue 2, Re@ct: Social Change Art Technology. Pages 127–141