Approximating High Dimensional Functions - Mathematical Foundations Workshop
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Overview
Syllabus
Multilevel weighted least squares polynomial approximation – Sören Wolfers, KAUST
Tensor train algorithms for stochastic PDE problems – Sergey Dolgov, University of Bath
Approximation of generalized ridge functions in high dimensions – Sandra Keiper
Ridge functions, their sums, and sparse additive functions – Jan Vybiral, Czech Technical University
Optimal sampling in weighted least-squares methods: Application to high-dimensional approximation
Concentration of tempered posteriors and of their variational approximations – Pierre Alquier
Recovery of ridge functions in the uniform norm – Sebastian Mayer, Universität Bonn
Score estimation with infinite-dimensional exponential families – Dougal Sutherland, UCL
Isotonic regression in general dimensions – Richard Samworth, University of Cambridge
Taught by
Alan Turing Institute