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Bertrand Charpentier
Bertrand Charpentier
Pruna AI, Ex-Technical University of Munich, Ex-Twitter
Verified email at in.tum.de - Homepage
Title
Cited by
Cited by
Year
Posterior network: Uncertainty estimation without ood samples via density-based pseudo-counts
B Charpentier, D Zügner, S Günnemann
Advances in Neural Information Processing Systems 33, 2020
2002020
Graph posterior network: Bayesian predictive uncertainty for node classification
M Stadler, B Charpentier, S Geisler, D Zügner, S Günnemann
Advances in Neural Information Processing Systems 34, 18033-18048, 2021
792021
Scikit-network: Graph analysis in python
T Bonald, N De Lara, Q Lutz, B Charpentier
Journal of Machine Learning Research 21 (185), 1-6, 2020
732020
Natural posterior network: Deep bayesian predictive uncertainty for exponential family distributions
B Charpentier, O Borchert, D Zügner, S Geisler, S Günnemann
International Conference on Learning Representations, 2021
72*2021
Hierarchical graph clustering using node pair sampling
T Bonald, B Charpentier, A Galland, A Hollocou
arXiv preprint arXiv:1806.01664, 2018
672018
Edge directionality improves learning on heterophilic graphs
E Rossi, B Charpentier, F Di Giovanni, F Frasca, S Günnemann, ...
Learning on Graphs Conference, 25: 1-25: 27, 2024
542024
Evaluating robustness of predictive uncertainty estimation: Are Dirichlet-based models reliable?
AK Kopetzki, B Charpentier, D Zügner, S Giri, S Günnemann
International Conference on Machine Learning, 5707-5718, 2021
532021
Uncertainty on asynchronous time event prediction
M Biloš, B Charpentier, S Günnemann
Advances in Neural Information Processing Systems 32, 2019
452019
Differentiable DAG Sampling
B Charpentier, S Kibler, S Günnemann
International Conference on Learning Representations, 2022
412022
Winning the lottery ahead of time: Efficient early network pruning
J Rachwan, D Zügner, B Charpentier, S Geisler, M Ayle, S Günnemann
International Conference on Machine Learning, 18293-18309, 2022
282022
Disentangling Epistemic and Aleatoric Uncertainty in Reinforcement Learning
B Charpentier, R Senanayake, M Kochenderfer, S Günnemann
Distribution-Free Uncertainty Quantification Workshop (DFUQ - ICML), 2022
262022
Adversarial training for graph neural networks: Pitfalls, solutions, and new directions
L Gosch, S Geisler, D Sturm, B Charpentier, D Zügner, S Günnemann
Advances in Neural Information Processing Systems 36, 2024
222024
On out-of-distribution detection with energy-based models
S Elflein, B Charpentier, D Zügner, S Günnemann
Uncertainty and Robustness in Deep Learning - ICML Workshop, 2021
192021
Uncertainty estimation for molecules: Desiderata and methods
T Wollschläger, N Gao, B Charpentier, MA Ketata, S Günnemann
International conference on machine learning, 37133-37156, 2023
112023
Accuracy is not the only Metric that matters: Estimating the Energy Consumption of Deep Learning Models
J Getzner, B Charpentier, S Günnemann
Tackling Climate Change with Machine Learning: Global Perspectives and Local …, 2023
102023
Training, Architecture, and Prior for Deterministic Uncertainty Methods
B Charpentier, C Zhang, S Günnemann
Pitfalls of limited data and computation for Trustworthy ML Workshop …, 2023
72023
Uncertainty for Active Learning on Graphs
D Fuchsgruber, T Wollschläger, B Charpentier, A Oroz, S Günnemann
arXiv preprint arXiv:2405.01462, 2024
52024
On the Robustness and Anomaly Detection of Sparse Neural Networks
M Ayle, B Charpentier, J Rachwan, D Zügner, S Geisler, S Günnemann
Sparsity in Neural Networks Workshop (SNN), 2022
52022
Hierarchical graph clustering using node pair sampling. arXiv
T Bonald, B Charpentier, A Galland, A Hollocou
arXiv preprint arXiv:1806.01664, 2018
52018
Structurally Prune Anything: Any Architecture, Any Framework, Any Time
X Wang, J Rachwan, S Günnemann, B Charpentier
arXiv preprint arXiv:2403.18955, 2024
42024
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Articles 1–20