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A primer on PAC-Bayesian learning *followed by* News from the PAC-Bayes frontline

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Department of Statistics
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Benjamin Guedj, University College London, gives a OxCSML Seminar on 26th March 2021.
Abstract: PAC-Bayes is a generic and flexible framework to address generalisation abilities of machine learning algorithms. It leverages the power of Bayesian inference and allows to derive new learning strategies. I will briefly present the key concepts of PAC-Bayes and highlight a few recent contributions from my group.

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Episode Information

Series
Department of Statistics
People
Benjamin Guedj
Keywords
statistics
Bayesian
mathematics
machine learning
ai
Department: Department of Statistics
Date Added: 28/05/2021
Duration: 00:59:06

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