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xAI 2021 : Explainable AI

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Link: https://human-centered.ai/explainable-ai-workshop-2021/
 
When Aug 16, 2021 - Aug 20, 2021
Where Vienna
Submission Deadline Apr 21, 2021
Final Version Due Jun 13, 2021
Categories    interpretable machine learning   explainability   responsible ai   human-centered ai
 

Call For Papers

In this cross-disciplinary workshop we aim to bring together international experts cross-domain, interested in making machine decisions transparent, interpretable, transparent, reproducible, replicable, re-traceable, re-enactive, comprehensible, explainable towards ethical-responsible AI/machine learning.
All submissions will be peer reviewed by three members of our international scientific comittee. Accepted papers will be presented at the workshop orally or as poster and published in the IFIP CD-MAKE Volume of Springer Lecture Notes (LNCS), see LNCS 11015 as example.

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