Laurent recently pointed me to the slides of a workshop that took place at IHES this past March. Here they are:
Figure from Remi Gribonval's talk.
- Ohad Shamir Trade-offs in Distributed Learning
- Alain Celisse Using kernels to detect abrupt changes in time series
- Alexandre d'Aspremont Renegar's Condition Number and Compressed Sensing Performance
- Emilie Kaufmann Optimal Best Arm Identification with Fixed Confidence
- Vianney Perchet Highly-Smooth Zero-th Order Online Optimization
- Garvesh Raskutti Algorithmic and statistical perspectives of randomized sketching for ordinary least-squares
- Pierre Alquier On the Properties of Variational Approximations of Gibbs Posteriors
- Quentin Berthet Trade-offs in Statistical Learning
- Remi Gribonval Projections, Learning, and Sparsity for Efficient Data Processing
- Silvia Villa Generalization properties of multiple passes stochastic gradient method
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2 comments:
Hi Igor,
just to point out a small mistake, Emilie Kaufman's slides redirect to Alexandre d'Aspremont's.
Cheers !
Fixed ! Thanks Nicolas.
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