open access publication

Conference Paper, 2024

Machine Learning Processes As Sources of Ambiguity: Insights from AI Art

Proceedings of the CHI Conference on Human Factors in Computing Systems, ISBN 9798400703300, Pages 1-14, 10.1145/3613904.3642855

Contributors

Sivertsen, Christian 0000-0001-6843-5009 [1] Salimbeni, Guido [2] Løvlie, Anders Sundnes 0000-0003-0484-4668 [1] Benford, Steven David [2] Zhu, Jichen 0000-0001-6740-4550 [1]

Affiliations

  1. [1] IT University of Copenhagen
  2. [NORA names: ITU IT University of Copenhagen; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] University of Nottingham
  4. [NORA names: United Kingdom; Europe, Non-EU; OECD]

Abstract

Ongoing efforts to turn Machine Learning (ML) into a design material have encountered limited success. This paper examines the burgeoning area of AI art to understand how artists incorporate ML in their creative work. Drawing upon related HCI theories, we investigate how artists create ambiguity by analyzing nine AI artworks that use computer vision and image synthesis. Our analysis shows that, in addition to the established types of ambiguity, artists worked closely with the ML process (dataset curation, model training, and application) and developed various techniques to evoke the ambiguity of processes. Our finding indicates that the current conceptualization of ML as a design material needs to reframe the ML process as design elements, instead of technical details. Finally, this paper offers reflections on commonly held assumptions in HCI about ML uncertainty, dependability, and explainability, and advocates to supplement the artifact-centered design perspective of ML with a process-centered one.

Keywords

AI art, HCI theory, Hcy, ML process, ML uncertainty, advocates, ambiguity, analysis, area, art, artists, artworks, computer, computer vision, conceptualization, dependence, design, design elements, design materials, details, elements, explainability, image synthesis, images, learning, learning process, machine, machine learning, machine learning process, materials, perspective of ML, process, process-centered, reflection, source, sources of ambiguity, success, synthesis, technical details, technique, theory, uncertainty, vision

Data Provider: Digital Science