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Tim Van Erven
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28
An Online Feasible Point Method for Benign Generalized Nash Equilibrium Problems
3 October 2024 by
Sarah Sachs
and
others
Machine Learning
The Risks of Recourse in Binary Classification
1 March 2024 by
Hidde Fokkema
and
others
at
University of Amsterdam
Machine Learning
,
Computers and Society
Attribution-based Explanations that Provide Recourse Cannot be Robust
20 December 2023 by
Hidde Fokkema
and
others
Machine Learning
Towards Characterizing the First-order Query Complexity of Learning (Approximate) Nash Equilibria in Zero-sum Matrix Games
2 November 2023 by
Hédi Hadiji
and
others
at
L2S
Computer Science and Game Theory
,
Optimization and Control
Adaptive Selective Sampling for Online Prediction with Experts
20 October 2023 by
Rui Castro
and
others
Machine Learning
Generalization Guarantees via Algorithm-dependent Rademacher Complexity
4 July 2023 by
Sarah Sachs
and
others
Machine Learning
First- and Second-Order Bounds for Adversarial Linear Contextual Bandits
22 May 2023 by
Julia Olkhovskaya
and
others
Machine Learning
Accelerated Rates between Stochastic and Adversarial Online Convex Optimization
6 March 2023 by
Sarah Sachs
and
others
Machine Learning
,
Optimization and Control
Scale-free Unconstrained Online Learning for Curved Losses
15 June 2022 by
Jack Mayo
and
others
Machine Learning
Between Stochastic and Adversarial Online Convex Optimization: Improved Regret Bounds via Smoothness
8 June 2022 by
Sarah Sachs
and
others
Machine Learning
,
Optimization and Control
Distributed Online Learning for Joint Regret with Communication Constraints
25 October 2021 by
Dirk Van Der Hoeven
and
others
Machine Learning
MetaGrad: Adaptation using Multiple Learning Rates in Online Learning
30 August 2021 by
Tim Van Erven
and
others
Machine Learning
Explaining Predictions by Approximating the Local Decision Boundary
22 October 2020 by
Georgios Vlassopoulos
and
others
Machine Learning
Fast Exact Bayesian Inference for Sparse Signals in the Normal Sequence Model
15 April 2020 by
Tim Van Erven
and
Botond Szábo
Methodology
,
Statistics Theory
Lipschitz Adaptivity with Multiple Learning Rates in Online Learning
30 May 2019 by
Zakaria Mhammedi
and
others
Machine Learning
The Many Faces of Exponential Weights in Online Learning
5 June 2018 by
Dirk Van Der Hoeven
and
others
Machine Learning
MetaGrad: Multiple Learning Rates in Online Learning
23 June 2016 by
Tim Van Erven
and
Wouter Koolen
Machine Learning
Combining Adversarial Guarantees and Stochastic Fast Rates in Online Learning
20 May 2016 by
Wouter Koolen
and
others
Machine Learning
Fast rates in statistical and online learning
1 September 2015 by
Tim Van Erven
and
others
Machine Learning
Second-order Quantile Methods for Experts and Combinatorial Games
27 February 2015 by
Wouter Koolen
and
Tim Van Erven
Machine Learning
PAC-Bayes Mini-tutorial: A Continuous Union Bound
7 May 2014 by
Tim Van Erven
Machine Learning
Rényi Divergence and Kullback-Leibler Divergence
24 April 2014 by
Tim Van Erven
and
Peter Harremoes
Information Theory
,
Statistics Theory
A Second-order Bound with Excess Losses
10 February 2014 by
Pierre Gaillard
and
others
Machine Learning
,
Statistics Theory
Follow the Leader If You Can, Hedge If You Must
17 January 2013 by
Steven Rooij
and
others
Machine Learning
Adaptive Hedge
28 October 2011 by
Tim Van Erven
and
others
Machine Learning
Freezing and Sleeping: Tracking Experts that Learn by Evolving Past Posteriors
27 August 2010 by
Wouter Koolen
and
Tim Van Erven
Machine Learning
Switching between Hidden Markov Models using Fixed Share
26 August 2010 by
Wouter Koolen
and
Tim Van Erven
Machine Learning
Rényi Divergence and its Properties
26 May 2010 by
Tim Van Erven
and
Peter Harremoes
at
CWI Amsterdam
Information Theory
Catching Up Faster by Switching Sooner: A Prequential Solution to the AIC-BIC Dilemma
7 July 2008 by
Tim Van Erven
and
others
Statistics Theory
,
Information Theory
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Key points
Topics
Machine Learning
Statistics Theory
Information Theory
Optimization and Control
Methodology
Computers and Society
Computer Science and Game Theory
Computation