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Open Graph

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Mark van der Wilk

description

Associate Professor in Machine Learning

site name

Mark van der Wilk

author

Mark van der Wilk

updated

2026-03-04 06:26:48

raw text

Mark van der Wilk Mark van der Wilk Mark van der Wilk Home Group Research Overview Teaching Talks Publications Mark van der Wilk Associate Professor in Machine Learning University of Oxford Research I am an Associate Professor in the Department of Computer Science at the University of Oxford , researching machine learning, and a Tutorial Fellow at Hertford College . Together with my research group , I work on three central questions: How do we find general patterns that allow generalization beyond the training set, without humans manually encoding them? (Equivariance, causality, continual learning…) How can we create neurons that automatically assemble their connectivity structure (architecture), while minimising the computational costs of the network as a whole? (Generalisation bounds, Bayesian model selection, MDL, meta-learning) How do we interact with the environment, while avoiding risk but learning as quickly as possible? (Bayesian optimi...

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