Classification in the presence of label noise: a survey B Frénay, M Verleysen IEEE transactions on neural networks and learning systems 25 (5), 845-869, 2013 | 1913 | 2013 |
Legal requirements on explainability in machine learning A Bibal, M Lognoul, A De Streel, B Frénay Artificial Intelligence and Law 29, 149-169, 2021 | 167 | 2021 |
Interpretability of machine learning models and representations: an introduction A Bibal, B Frénay 24th european symposium on artificial neural networks, computational …, 2016 | 158 | 2016 |
Using SVMs with randomised feature spaces: an extreme learning approach. B Frénay, M Verleysen ESANN, 2010 | 143 | 2010 |
A comprehensive introduction to label noise. B Frénay, A Kabán ESANN, 2014 | 129 | 2014 |
Feature selection for nonlinear models with extreme learning machines F Benoît, M Van Heeswijk, Y Miche, M Verleysen, A Lendasse Neurocomputing 102, 111-124, 2013 | 106 | 2013 |
Parameter-insensitive kernel in extreme learning for non-linear support vector regression B Frénay, M Verleysen Neurocomputing 74 (16), 2526-2531, 2011 | 102 | 2011 |
Is mutual information adequate for feature selection in regression? B Frénay, G Doquire, M Verleysen Neural Networks 48, 1-7, 2013 | 96 | 2013 |
Clustering patterns of urban built-up areas with curves of fractal scaling behaviour I Thomas, P Frankhauser, B Frenay, M Verleysen Environment and Planning B: Planning and Design 37 (5), 942-954, 2010 | 78 | 2010 |
Supervised ECG delineation using the wavelet transform and hidden Markov models G de Lannoy, B Frénay, M Verleysen, J Delbeke 4th European Conference of the International Federation for Medical and …, 2009 | 54 | 2009 |
Ethical adversaries: Towards mitigating unfairness with adversarial machine learning P Delobelle, P Temple, G Perrouin, B Frénay, P Heymans, B Berendt ACM SIGKDD Explorations Newsletter 23 (1), 32-41, 2021 | 46 | 2021 |
Theoretical and empirical study on the potential inadequacy of mutual information for feature selection in classification B Frénay, G Doquire, M Verleysen Neurocomputing 112, 64-78, 2013 | 42 | 2013 |
Estimating mutual information for feature selection in the presence of label noise B Frénay, G Doquire, M Verleysen Computational Statistics & Data Analysis 71, 832-848, 2014 | 38 | 2014 |
Reinforced extreme learning machines for fast robust regression in the presence of outliers B Frénay, M Verleysen IEEE Transactions on Cybernetics 46 (12), 3351-3363, 2015 | 31 | 2015 |
Constraint enforcement on decision trees: A survey G Nanfack, P Temple, B Frénay ACM Computing Surveys (CSUR) 54 (10s), 1-36, 2022 | 26 | 2022 |
Ensembles of local linear models for bankruptcy analysis and prediction L Kainulainen, Y Miche, E Eirola, Q Yu, B Frénay, E Séverin, A Lendasse Case Studies In Business, Industry And Government Statistics 4 (2), 116-133, 2011 | 25 | 2011 |
Decision trees: from efficient prediction to responsible AI H Blockeel, L Devos, B Frénay, G Nanfack, S Nijssen Frontiers in Artificial Intelligence 6, 1124553, 2023 | 21 | 2023 |
Explaining t-SNE embeddings locally by adapting LIME A Bibal, VM Vu, G Nanfack, B Frénay 28th European Symposium on Artificial Neural Networks, Computational …, 2020 | 20 | 2020 |
Achieving rotational invariance with bessel-convolutional neural networks V Delchevalerie, A Bibal, B Frénay, A Mayer Advances in Neural Information Processing Systems 34, 28772-28783, 2021 | 18 | 2021 |
Label noise-tolerant hidden Markov models for segmentation: application to ECGs B Frénay, G de Lannoy, M Verleysen Machine Learning and Knowledge Discovery in Databases: European Conference …, 2011 | 18 | 2011 |