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Remember that we did not quite manage to cover the whole Organizers: Bolei Zhou Laurens van der Maaten Been Kim Andrea Vedaldi Description: Complex In the first segment of the workshop, Professor Hima Lakkaraju motivates the need for Speaker: Manojit Nandi Today, businesses use algorithmic decision-making in various applications, such as determining who ... Presented at the University of Calgary Transdisciplinary Data Science Research Day (Invited Talk) This is a talk for the paper with the same name: If you want to learn more about specific methods ...
Christoph Molnar is one of the main people to know in the space of
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Last Updated: May 22, 2026
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