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Explainability Requirement Practices and Challenges from a Brazilian Industrial Research and Innovation Company
0
Zitationen
5
Autoren
2025
Jahr
Abstract
We conducted a study to investigate how professionals leading machine learning (ML) projects perceive explainability and the challenges they face when addressing it as a software requirement. Semi-structured interviews were conducted with 13 professionals responsible for ML projects, following a hypothetico-deductive approach. The collected data were analyzed based on the principles of Grounded Theory, using open and axial coding to identify emerging themes and relationships.
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