Selective review of offline change point detection methods C Truong, L Oudre, N Vayatis Signal Processing 167, 107299, 2020 | 1147 | 2020 |
Ranking and Empirical Minimization of U-statistics S Clémençon, G Lugosi, N Vayatis | 430 | 2008 |
On the Bayes-risk consistency of regularized boosting methods G Lugosi, N Vayatis The Annals of statistics 32 (1), 30-55, 2004 | 293 | 2004 |
Parallel Gaussian process optimization with upper confidence bound and pure exploration E Contal, D Buffoni, A Robicquet, N Vayatis Joint European Conference on Machine Learning and Knowledge Discovery in …, 2013 | 228 | 2013 |
Estimation of simultaneously sparse and low rank matrices E Richard, PA Savalle, N Vayatis Proceedings of ICML'12, 2012 | 223 | 2012 |
On the rate of convergence of regularized boosting classifiers G Blanchard, G Lugosi, N Vayatis Journal of Machine Learning Research 4 (Oct), 861-894, 2003 | 157 | 2003 |
A review of center of pressure (COP) variables to quantify standing balance in elderly people: Algorithms and open‐access code F Quijoux, A Nicolaï, I Chairi, I Bargiotas, D Ricard, A Yelnik, L Oudre, ... Physiological reports 9 (22), e15067, 2021 | 137 | 2021 |
Global optimization of Lipschitz functions C Malherbe, N Vayatis International Conference on Machine Learning, 2314-2323, 2017 | 137 | 2017 |
Ranking the best instances S Clémençon, N Vayatis The Journal of Machine Learning Research 8, 2671-2699, 2007 | 133 | 2007 |
Gaussian process optimization with mutual information E Contal, V Perchet, N Vayatis International Conference on Machine Learning, 253-261, 2014 | 114 | 2014 |
Recursive aggregation of estimators by the mirror descent algorithm with averaging AB Juditsky, AV Nazin, AB Tsybakov, N Vayatis Problems of Information Transmission 41 (4), 368-384, 2005 | 112 | 2005 |
Tree-based ranking methods S Clémençon, N Vayatis IEEE Transactions on Information Theory 55 (9), 4316-4336, 2009 | 106 | 2009 |
Ranking and scoring using empirical risk minimization S Clemençon, G Lugosi, N Vayatis International conference on computational learning theory, 1-15, 2005 | 106 | 2005 |
Prediction and optimization of wave energy converter arrays using a machine learning approach D Sarkar, E Contal, N Vayatis, F Dias Renewable Energy 97, 504-517, 2016 | 89 | 2016 |
Ranking forests S Clémençon, M Depecker, N Vayatis The Journal of Machine Learning Research 14 (1), 39-73, 2013 | 73 | 2013 |
Can small islands protect nearby coasts from tsunamis? An active experimental design approach TS Stefanakis, E Contal, N Vayatis, F Dias, CE Synolakis Proceedings of the Royal Society A: Mathematical, Physical and Engineering …, 2014 | 53 | 2014 |
Nonparametric markovian learning of triggering kernels for mutually exciting and mutually inhibiting multivariate hawkes processes R Lemonnier, N Vayatis Machine Learning and Knowledge Discovery in Databases: European Conference …, 2014 | 53 | 2014 |
Overlaying classifiers: a practical approach to optimal scoring S Clémençon, N Vayatis Constructive Approximation 32, 619-648, 2010 | 53 | 2010 |
Gap-free bounds for stochastic multi-armed bandit A Juditsky, AV Nazin, AB Tsybakov, N Vayatis IFAC Proceedings Volumes 41 (2), 11560-11563, 2008 | 51 | 2008 |
Empirical performance maximization for linear rank statistics S Clémençcon, N Vayatis Advances in neural information processing systems 21, 2008 | 50 | 2008 |