Sub-Gaussian mean estimators L Devroye, M Lerasle, G Lugosi, RI Oliveira | 202 | 2016 |
Robust machine learning by median-of-means: theory and practice G Lecué, M Lerasle | 178 | 2020 |
Choice of V for V-fold cross-validation in least-squares density estimation S Arlot, M Lerasle Journal of Machine Learning Research 17 (208), 1-50, 2016 | 130 | 2016 |
Robust empirical mean estimators M Lerasle, RI Oliveira arXiv preprint arXiv:1112.3914, 2011 | 95 | 2011 |
Robust classification via MOM minimization G Lecué, M Lerasle, T Mathieu Machine learning 109, 1635-1665, 2020 | 66 | 2020 |
Selected topics on robust statistical learning theory M Lerasle Lecture Notes, 2019 | 55* | 2019 |
Kernels based tests with non-asymptotic bootstrap approaches for two-sample problems M Fromont, B Laurent, M Lerasle, P Reynaud-Bouret Conference on Learning Theory, 23.1-23.23, 2012 | 52 | 2012 |
Learning from MOM’s principles: Le Cam’s approach G Lecué, M Lerasle Stochastic Processes and their applications 129 (11), 4385-4410, 2019 | 49 | 2019 |
Optimal model selection in density estimation M Lerasle Annales de l'IHP Probabilités et statistiques 48 (3), 884-908, 2012 | 48 | 2012 |
Optimal change-point detection and localization N Verzelen, M Fromont, M Lerasle, P Reynaud-Bouret The Annals of Statistics 51 (4), 1586-1610, 2023 | 37 | 2023 |
Optimal model selection for density estimation of stationary data under various mixing conditions M Lerasle | 37 | 2011 |
Monk outlier-robust mean embedding estimation by median-of-means M Lerasle, Z Szabó, T Mathieu, G Lecué International Conference on Machine Learning, 3782-3793, 2019 | 33 | 2019 |
Robust statistical learning with Lipschitz and convex loss functions G Chinot, G Lecué, M Lerasle Probability Theory and related fields 176 (3), 897-940, 2020 | 32 | 2020 |
On the robustness of the minimum interpolator G Chinot, M Lerasle arXiv preprint arXiv:2003.05838, 2020 | 18 | 2020 |
The number of potential winners in Bradley–Terry model in random environment R Chetrite, R Diel, M Lerasle | 18 | 2017 |
Family-wise separation rates for multiple testing M Fromont, M Lerasle, P Reynaud-Bouret | 18 | 2016 |
Aggregated hold-out G Maillard, S Arlot, M Lerasle Journal of Machine Learning Research 22 (20), 1-55, 2021 | 16 | 2021 |
Robust high dimensional learning for Lipschitz and convex losses C Geoffrey, L Guillaume, L Matthieu Journal of Machine Learning Research 21 (233), 1-47, 2020 | 16 | 2020 |
Markov approximation of chains of infinite order in the -metric S Gallo, M Lerasle, DY Takahashi Markov Processes and Related Fields 19 (1), 51--82, 2013 | 16 | 2013 |
Statistical learning with Lipschitz and convex loss functions G Chinot, L Guillaume, L Matthieu arXiv preprint arXiv:1810.01090, 2018 | 15 | 2018 |