The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
Unbiased Learning from Biased User Feedback with Thorsten Joachims - TWiML Talk #207
07 Dec 2018
In the final episode of our re:Invent series, we're joined by Thorsten Joachims, Professor in the Department of Computer Science at Cornell University. We discuss his presentation “Unbiased Learning from Biased User Feedback,” looking at some of the inherent and introduced biases in recommender systems, and the ways to avoid them. We also discuss how inference techniques can be used to make learning algorithms more robust to bias, and how these can be enabled with the correct type of logging policies.
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