Département d’informatique et de génie logiciel,
Pavillon Adrien-Pouliot, Local PLT-3949
Université Laval,
Québec (QC), Canada, G1V 0A6
Courriel / e-mail: firstname.lastname@ift.ulaval.ca
Intérêts de recherche / Research interests:
Statistical machine learning theory (with an emphasis on PAC-Bayesian learning), domain adaptation, learning algorithms, representation learning, interpretability ...
Sample Compression for Continual Learning
[ arXiv ]
(2025)
Unsupervised Insider Threat Detection Using Multi-Head Self-Attention Mechanisms
[ proceedings ]
(Intelligent Cybersecurity Conference, ICSC 2024)
Phoneme Discretized Saliency Maps for Explainable Detection of AI-Generated Voice
[ arXiv preprint ]
(Interspeech 2024)
Seeking Interpretability and Explainability in Binary Activated Neural Networks
[ arXiv preprint ]
(World Conference on eXplainable Artificial Intelligence, xAI 2024)
A General Framework for the Practical Disintegration of PAC-Bayesian Bounds
[ article ]
[ arXiv preprint ]
(Mach. Learn. 2024)
Statistical Guarantees for Variational Autoencoders using PAC-Bayesian Theory
[ proceedings ]
[ arXiv ]
(NeurIPS 2023)
PAC-Bayesian Generalization Bounds for Adversarial Generative Models
[ proceedings ]
[ arXiv ]
[ bibtex ]
(ICML 2023)
Erratum: Risk Bounds for the Majority Vote: From a PAC-Bayesian Analysis to a Learning Algorithm
[ paper ]
(JMLR 2023)
Invariant Causal Set Covering Machines
[ paper ]
[ bibtex ]
(ICML 2023 Workshop on Spurious Correlations, Invariance, and Stability)
Sample Boosting Algorithm (SamBA) - An Interpretable Greedy Ensemble Classifier Based On Local Expertise For Fat Data
[ proceedings ]
[ bibtex ]
(UAI 2023)
PAC-Bayesian Learning of Aggregated Binary Activated Neural Networks with Probabilities over Representations
[ proceedings ]
[ arXiv ]
[ bibtex ]
(CANAI 2023)
Interpretable Domain Adaptation Using Unsupervised Feature Selection on Pre-trained Source Models
[ paper ]
[ preprint ]
[ code ]
(Neurocomputing 2022)
Interpretable Domain Adaptation for Hidden Subdomain Alignment in the Context of Pre-Trained Source
Models
[ proceedings ]
[ supplemental ]
[ HAL ]
[ spotlight ]
[ code ]
(AAAI 2022)
Learning Stochastic Majority Votes by Minimizing a PAC-Bayes Generalization Bound
[ proceedings ]
[ arXiv ]
(NeurIPS 2021)
Self-Bounding Majority Vote Learning Algorithms by the Direct Minimization of a Tight PAC-Bayesian C-Bound
[ paper ]
(ECML 2021)
Target to Source Coordinate-wise Adaptation of Pre-trained Models
[ paper ]
[ supplemental ]
[ video ]
[ code ]
(ECML 2020)
Landmark-based Ensemble Learning with Random Fourier Features and Gradient Boosting
[ paper ]
[ video ]
(ECML 2020)
PAC-Bayesian Contrastive Unsupervised Representation Learning
[ proceedings ]
[ supplemental ]
[ arXiv ]
[ bibtex ]
[ video ]
[ code ]
(UAI 2020)
PAC-Bayes and Domain Adaptation
[ published version ]
[ arXiv ]
[ bibtex ]
(Neurocomputing 2020)
Improved PAC-Bayesian Bounds for Linear Regression
[ proceedings ]
[ arXiv ]
[ bibtex ]
(AAAI 2020)
Dichotomize and Generalize: PAC-Bayesian Binary Activated Deep Neural Networks
[ proceedings ]
[ arXiv ]
[ bibtex ]
[ video ]
[ code ]
(NeurIPS 2019)
Pseudo-Bayesian Learning with Kernel Fourier Transform as Prior
[ pdf, supplemental ]
[ bibtex ]
[ poster ]
[ code, datasets ]
(AISTATS 2019)
Multiview Boosting by Controlling the Diversity and the Accuracy of View-specific Voters
[ published version ]
[ arXiv preprint ]
(Neurocomputing 2019)
Domain-Adversarial Training of Neural Networks
[ pdf ]
[ bib ]
[ source code: shallow version | deep version ]
[ data ]
(JMLR 2016, and Springer 2017*)
*A slighlty shorter version of the JMLR version is published as a book chapter in Domain Adaptation in Computer Vision Applications (Editor: Gabriela Csurka).
PAC-Bayesian Analysis for a two-step Hierarchical Mutliview Learning Approach
[ pdf ]
(ECML 2017)
PAC-Bayesian Theory Meets Bayesian Inference
[ paper ]
[ spotlight:
video |
slides ]
[ poster ]
[ code ]
(NIPS 2016)
A New PAC-Bayesian Perspective on Domain Adaptation
[ pdf ]
[ supplemental ]
[ bib ]
[ source code ]
[ data ]
(ICML 2016)
PAC-Bayesian Bounds based on the Rényi Divergence
[ paper ]
[ bib ]
[ poster ]
(AISTATS 2016)
Risk Bounds for the Majority Vote: From a PAC-Bayesian Analysis to a Learning Algorithm
[ paper ]
[ source code ]
[ erratum ]
(JMLR 2015)
PAC-Bayesian Theory for Transductive Learning
[ paper, supplemental ]
[ bib ]
[ poster ]
[ source code ]
(AISTATS 2014)
A PAC-Bayesian Approach for Domain Adaptation with Specialization to Linear Classifiers
[ paper, supplemental ]
[ bib ]
[ source code ]
[ data ]
[ extended version ]
(ICML 2013)
A Pseudo-Boolean Set Covering Machine
[ pdf ]
(CP 2012)
A PAC-Bayes Sample Compression Approach to Kernel Methods
[ paper ]
[ supplemental ]
(ICML 2011)
From PAC-Bayes Bounds to KL Regularization
[ pdf ]
(NIPS 2009)
PAC-Bayesian Learning of Linear Classifier
[ pdf ]
(ICML 2009)
A PAC-Bayes Risk Bound for General Loss Functions
[ pdf ]
(NIPS 2006)
PAC-Bayes Bounds for the Risk of the Majority Vote and the Variance of the Gibbs Classifier
[ pdf ]
(NIPS 2006)
06/06/2019 : PAC-Bayesian Learning and Neural Networks; The Binary Activated Case [ slides ] 51es Journées de Statistique (Nancy, France)
06/03/2019 :
Réseau de neurones artificiels et apprentissage profond
[ slides (french) ]
Journée de l'Enseignement de l'Informatique et de l'Algorithmique (Université de Lille, France)
24/01/2017 : Generalization of the PAC-Bayesian Theory, and Applications to Semi-Supervised Learning [ slides ] Modal Seminar (INRIA Lille, France)
20/06/2016 : A New PAC-Bayesian Perspective on Domain Adaptation [ slides ] ICML (New-York, US)
02/06/2016 : Variations on the PAC-Bayesian Bound [ slides ] Bayes in Paris (École nationale de la statistique et de l'administration économique - ENSAE, Paris, France)
31/03/2016 : A Representation Learning Approach for Domain Adaptation [ slides ] [ Proof by Twitter ] Data Intelligence Group Seminar (Laboratoire Hubert-Curien / Université Jean-Monnet, St-Étienne, France)
01/03/2016 : A Representation Learning Approach for Domain Adaptation [ slides ] TAO Seminars (INRIA Saclay / CNRS / Université Paris-Sud, Orsay, France)
25/11/2015 : PAC-Bayesian Theory and Domain Adaptation Algorithms [ slides ] SIERRA Seminars (INRIA Paris / CNRS / ENS, Paris, France)
13/12/2014 :
Domain-Adversarial Neural Networks
[ slides ]
[ workshop paper ]
NIPS 2014 Workshop on Transfer and Multi-task learning: Theory Meets Practice
(Montreal, Quebec, Canada)
07/12/2012 :
PAC-Bayesian Learning and Domain Adaptation
[ slides ]
NIPS 2012 Workshop: Multi-trade-off in Machine Learning
(Lake Tahoe, Nevada, US)
05/04/2013 :
L'adaptation de domaine en apprentissage automatique: introduction et approche PAC-Bayésienne
[ slides (french) ]
Séminaires du département d'informatique et de génie logiciel
(Université Laval, Quebec, Canada)
09/10/2012 :
A Pseudo-Boolean Set Covering Machine
[ slides ]
18th International Conference on Principles and Practice of Constraint Programming
(Quebec city, Quebec, Canada)
03/04/2009 :
Rudiments de l'apprentissage automatique et de la classification
(ainsi que quelques notions plus avancées!)
[ slides (french) ]
Séminaires de l'Association des étudiant(e)s gradué(e)s en informatique à Laval (Université Laval, Québec, Canada)