Mediation Challenges and Socio-Technical Gaps for Explainable Deep Learning Applications

16 Jul 2019Rafael BrandãoJoel CarboneraClarisse de SouzaJuliana FerreiraBernardo GonçalvesCarla Leitão

The presumed data owners' right to explanations brought about by the General Data Protection Regulation in Europe has shed light on the social challenges of explainable artificial intelligence (XAI). In this paper, we present a case study with Deep Learning (DL) experts from a research and development laboratory focused on the delivery of industrial-strength AI technologies... (read more)

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