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Toward Human–AI Interfaces to Support Explainability and Causability in Medical AI
87
Zitationen
2
Autoren
2021
Jahr
Abstract
Our concept of causability is a measure of whether and to what extent humans can understand a given machine explanation. We motivate causability with a clinical case from cancer research. We argue for using causability in medical artificial intelligence (AI) to develop and evaluate future human–AI interfaces.
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