Approaches to Fairness in Machine Learning with Richard Zemel
EPISODE 209
|
DECEMBER
12,
2018
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About this Episode
Today we continue our exploration of Trust in AI with this interview with Richard Zemel, Professor in the department of Computer Science at the University of Toronto and Research Director at Vector Institute.
In our conversation, Rich describes some of his work on fairness in machine learning algorithms, including how he defines both group and individual fairness and his group's recent NeurIPS poster, "Predict Responsibly: Improving Fairness and Accuracy by Learning to Defer."
About the Guest
Richard Zemel
University of Toronto
Resources
- Presentation: Predict Responsibly: Improving Fairness and Accuracy by Learning to Defer
- Presentation: Learning Adversarially Fair and Transferrable Representations
- Paper: Learning Fair Representations
- Learn more about Building Conversational AI Teams with Georgian Partners
- Sign up for our AI Platforms eBook Series!
- TWIML Presents: AWS re:Invent Series page
