Author ORCID Identifier
[0000-0001-6894-0996
Document Type
Conference Paper
Disciplines
Computer Sciences
Abstract
Recent interest within the research community related to explainable artificial intelligence (XAI) has led to a profuse amount of literature on the subject. Those who wish to tackle the domain from an HCI focus may be presented with overwhelming material, most of which does not pertain to human aspects of XAI. Taxonomies can serve to categorize a subject into topic areas and distill content into an overview of the field. This late breaking work intends to help those within the HCI community with a focus on XAI to understand relevant aspects of human centered XAI. We also present a taxonomy which can be used when categorizing real world XAI to identify gaps in XAI methods and predict future areas of research. Lastly, we introduce a novel aspect, practical XAI evaluation methods from a human centered perspective allowing for more effective evaluation of the AI – human interaction.
Recommended Citation
Sheridan, Helen; Murphy, Emma; and O'Sullivan, Dympna, "Human Centered Approaches and Taxonomies for Explainable Artificial Intelligence" (2024). Conference papers. 427.
https://arrow.tudublin.ie/scschcomcon/427
Funder
TU Dublin Scholarship
Included in
Artificial Intelligence and Robotics Commons, Graphics and Human Computer Interfaces Commons
Publication Details
Published and presented in AI-HCI artificial intelligence in HCI program at HCI international 2024.