Seminars
The page below lists the coming and past seminars, and provides a link to the presentations that you may have missed. Click on a presentation title for the abstract.
Alert emails are sent to the TAU team and to the announcement mailing-list tau-seminars to which anyone can subscribe by clicking here


The seminars take place on Tuesday afternoons at 14h30 in room 2014 (building 660), and are broadcasted online at https://bbb2.lri.fr/b/gui-hfj-kdg

Presentations are recorded and available here

March
- Tuesday, 14th of March, 14h30, Pierre Wolinsky (Statify team, Inria Grenoble-Alpes) : Gaussian Pre-Activations in Neural Networks: Myth or Reality? (Slides:Pres_ImposeGaussianPreactivations.pdf )
February
- Tuesday, 28th of February, 14h30, Filippo Masi (University of Sydney) : Thermodynamics-based Artificial Neural Networks (Slides:TAU_seminar_Masi.pdf )
- Tuesday, 21th of February, 14h30, Yulia Gusak (Inria Bordeaux) :Efficient Deep Learning
- Tuesday, 14th of February, 14h30, Beatriz Seoane Bartolomé(Departamento de Física Teórica,Un. Complutense de Madrid) :Explaining the effects of non-convergent sampling in the training of Energy-Based Models (Slides:LISN_BSeoane.pdf )
January
- Tuesday, 24th of January, 14h30, Bruno Loureiro (Center for Data Science, ENS Paris) : Phase diagram of Stochastic Gradient Descent in high-dimensional two-layer neural networks(Slides:slides_Loureiro_Bruno.pdf )
- Tuesday, 17th of January, 14h30, Vincenzo Schimmenti (Phd, TAU) : Assessing the predictive power of GPS data for aftershock pattern prediction
December
- Tuesday, 6th of December, 14h15, Alexander Reisach,Nicolas Atienza,Armand Lacombe, Shiyang Yan (TAU & AO team) : Causal learning project in the TAU team - Part 2 (Slides: TAU_seminars___06_12_22___Causal_Inference_projects.pdf)
November
- Tuesday, 29th of November, 14h15, Marylou Gabrié : Opportunities and Challenges in Enhancing Sampling with Learning (Slides: LRI_vsent.pdf)
- Tuesday, 22th of November, 14h15, Cyriaque Rousselot, Shuyu Dong and Audrey Poinsot (TAU & AO team) : Causal learning project in the TAU team - Part 1 (Slides: TAU_seminars___22_11_22___Causal_Inference_projects.pdf)
- Tuesday, 15th of November, 14h15, Manon Verbockhaven (TAU & AO team) : SPOTTING EXPRESSIVITY BOTTLENECKS AND FIXING THEM OPTIMALLY
October
- Tuesday, 25th of October, 14h15, Cyril Furtlehner (TAU) : Free Dynamics of Feature Learning Processes(Slides:Tau.pdf )
- Tuesday, 18th of October, 14h15, Pr. Vander Alves (University of Brasilia) : On the Interplay between Software Product Lines and Machine Learning Models
- Tuesday, 11th of October, 14h15, Pr. Li Weigang (University of Brasilia) : New Achievements of Artificial Intelligence in Multimodal Information Processing
July
- Monday, 5th of July, 14h30, Aymeric Blot (UCL) : Optimised source code as a Service
June
- Tuesday, 21th of June, 14h30, François Landes (TAU team) : Vocabulary and main stakes of fluid mechanics for dummies/for machine-learners
- Tuesday, 14th of June, 14h30, Yérali Gandica (LPTM, Cergy-Pontoise Univ.) : A Complex Systems approach to the emergence of socio-economic phenomena
- Tuesday, 7th of June, 14h30, Herilalaina Rakotoarison (TAU) : Learning meta-features for AutoML (link to paper https://openreview.net/forum?id=DTkEfj0Ygb8
)
May
- Tuesday, 17th of May, 14h30, Martin Weigt (Sorbonne Université, Computational and Quantitative Biology) : Generative modeling of protein and RNA sequence ensembles
- Tuesday, 10th of May, 14h30, Yufei Han (Inria Renne-Bretagne-Atlantique) : Towards Understanding the Robustness Against Evasion Attack on Categorical Data
April
- Tuesday, 26th of April, 14h30, Jeremie Cabessa (LEMMA, Un. Paris 2) : Finite state machines and bio-inspired neural networks
- Tuesday, 19th of April, 14h30, Marin Ferecatu (Equipe Vertigo, Laboratoire CEDRIC, CNAM) : Méthodes d'apprentissage statistique pour l'analyse et l'exploration interactive des contenus visuels / Machine learning methods for analysis and interactive exploration of visual data
- Tuesday, 12th of April, 14h30, Sylvain Chevallier(LISV - IUT Vélizy - UVSQ - Univ. Paris-Saclay) : Learning invariant representations, application to anomaly detection and transfer learning for time series
- Monday, 4th of April, 11h00, Michele Buzzicotti(Dept. of Physics and INFN, University of Rome) : AI meets turbulence: Lagrangian and Eulerian data-driven tools for optimal navigation and data-assimilation
February
- Tuesday, 11th of January, 14h30, Olivier Goudet (Angers University): Population-based gradient descent weight learning for graph coloring problems
- Tuesday, 1st of January, 14h30, online
: Olivier Teytaud (Facebook FAIR): Evolutionary Compilation and Baptiste Rozière (FAIR/Paris-Dauphine): Machine Learning for Source Code Translation
November
- Tuesday, 7th of November, 14:30 in room 2014 (building 660) and also online
: Titouan Vayer (ENS Lyon) : Learning on incomparable spaces using Optimal Transport → recording
October
- Tuesday, 16th of October, 11h30, in room 2014 and also online: Bruno Loureiro (EPFL) Exactly solvable models for high-dimensional inference and machine learning problems → recording
- Tuesday, 10th of October, 14h30, in room 445 "Patio", building 650
and also online
: Tony Bonnaire (Institut d'Astrophysique Spatiale, Université Paris-Saclay): Learning patterns from point-cloud datasets and applications to cosmology → recording
September
- Friday, 17th of September, 11h, in room 445 "Patio", building 650
and also online
: Aurélien Decelle (Theoretical physics lab of Universidad Complutense de Madrid): Equilibrium and non-Equilibrium regimes in the learning of Restricted Boltzmann Machines → recording
April
- Tuesday, 27th of April, 14h30, online
: Nguyen Kim Thang (IBISC, Univ. Evry / Paris-Saclay): A bandit learning algorithm and applications
- Tuesday, 20th of April, 14h30, online
: Vadim Strijov (Moscow Institute of Physics and Technology, Federal Research Center «Computer Science and Control» of the Russian Academy of Sciences): Model selection and multimodelling
- Tuesday, 13th of April, 14h30, online
: Sylvain Chevallier (LISV - UVSQ - Univ. Paris-Saclay): Learning invariant representation for transfer learning: application to BCI → recording
- [Data Science Department seminar] Thursday, 8th of April, 14h, online at DS seminars
: Alexis Dubreuil (Institut de la Vision, Sorbonne Universités, CNRS, INSERM / Group for Neural Theory from Ecole Normale Supérieure): Explainable Recurrent Neural Networks for neuroscience modeling
- Tuesday, 6th of April, 14h30, online
: Lotfi Chaari (IRIT, INP Toulouse): Signal et image: des problèmes inverses à l’apprentissage automatique → recording
March
- Tuesday, 30th of March, 14h30, online
: Matthieu Kowalski (L2S, Paris-Saclay): Inverse problems: from sparse time-frequency synthesis to dictionary learning" → recording
- Tuesday, 23rd of March, 10h30, online
: Daniel Berrar (Tokyo Institute of Technology): High-dimensional inference and optimization, Continual learning, and Model evaluation and selection → recording
- Tuesday, 9th of March, 14h30, online
: Abdourrahmane Atto (Université Savoie Mont Blanc (USMB) - LISTIC): Mesures de Performances et Mécanismes d'Attention par Apprentissage de Pénalités en Apprentissage Profond → recording
- Tuesday, 2nd of March, 14h30, online
: Yaël Frégier (LML, Université d'Artois / Max Planck Institute for Mathematics, Bonn): Mind2Mind: Transfer learning for GANs → recording
February
- Tuesday, 23rd of February, 14h30, online
: Michael Vaccaro (TAU/CentraleSupelec): AutoDL Self-Service → recording
, slides
- Tuesday, 9th of February, 14h30, online
: Riad Akrour (Intelligent Autonomous Systems group, TU Darmstadt): Entropy Regularization in RL through Interpolation → recording
, slides
- Friday, 5th of February (whole day): Journée Statistique et Informatique pour la Science des données à Paris Saclay→ recordings
December
- Tuesday, 15th of December, 14h30, online
: Jonathan Raiman (NVIDIA / TAU): DeepType 2: Superhuman entity linking; skip data cleaning, all your need is type interactions → recording
- Tuesday, 8th of December, 14h30, online
: [Journal Club] Victor Berger (TAU): Presentation of the article Bayesian Deep Learning and a Probabilistic Perspective of Generalization by Andrew Gordon Wilson, Pavel Izmailov → recording
November
- Tuesday, 24th of November, 15h, online
: Ievgen Redko (Data Intelligence team at Hubert Curien laboratory, University Jean Monnet of Saint-Etienne): Deep Neural Networks Are Congestion Games: From Loss Landscape to Wardrop Equilibrium and Beyond → recording
- Monday, 2nd of November, 14h30, online
: Pierre Jobic (TAU/BioInfo): Demography Inference with deep learning on sets with attention mechanisms in population genetics → recording
October
- Tuesday, 20th of October : CANCELLED
- Thursday, 15th of October, 14h30, online
: Giancarlo Fissore (TAU): Relative gradient optimization of the Jacobian term in unsupervised deep learning → recording
- Tuesday, 13th of October, 14h30, online
: Ahmed Skander Karkar (Criteo): A Principle of Least Action for the Training of Neural Networks → recording
, slides
- Tuesday, 6th of October, 14h30, online
: Pierre Wolinski (University of Oxford): Initializing a neural network on the edge of chaos → slides
April
- Monday, 6th of April, 10h30 (online): Abdourrahmane Atto (LISTIC – Université Savoie Mont Blanc): Apprentissage statistique, explicabilité et généralisabilité
March
- Friday, 13th of March, 14h (Shannon amphitheatre): Jean-Christophe Loiseau (DynFluid lab, ENSAM): Dimensionality reduction and system identification of physical systems : chaotic convection, a case study
- Friday, 6th of March, 16h (Shannon amphitheatre): Pierre Wolinski's PhD defense
- Wednesday, 3rd of March, 10h: Sarra Houiddi and Dominique Fourer (IBISC, Université d'Évry Val d'Essonne): Home Electrical Appliances Recognition using Relevant Features and Deep Neural Networks
February
- Friday, 28th of February, 11h: Rémi Flamary (Univ. Côte d'Azur): Optimal transport: Gromov-Wasserstein divergence and extensions
- Friday, 28th of February, 15h: [FormalDeep] Julien Girard (TAU/CEA-list) will present the paper Beyond the Single Neuron Convex Barrier for Neural Network Certification
- Friday, 14th of February, 11h: Stéphane Rivaud (Sony): Perceptual GAN for audio synthesis
January
- Friday, 17th of January, 11h: Amélie Héliou (Critéo): A journey to causal advertising
- Friday, 17th of January, 14h30: Loris Felardos presents the paper Biologically inspired alternatives to backpropagation through time for learning in recurrent neural nets
December
- Thursday, 19th of December, 17h (amphi Shannon): Lisheng Sun-Hosoya's PhD defense: Meta-Learning as a Markov Decision Process
- Tuesday, 17th of December, 17h (amphi Shannon): Diviyan Kalainathan's PhD defense: Generative Neural Networks to Infer Causal Mechanisms: Algorithms and Applications
November
- Friday, 29th of November, 11h: Luigi Gresele (Max Planck Institute for Intelligent Systems and Biological Cybernetics, Tübingen): The Incomplete Rosetta Stone Problem: Multi-View Nonlinear ICA, with applications to neuroimaging
- Friday, 29th of November, 14h (salle des thèses, bâtiment 650): Guillaume Doquet's PhD defense: Agnostic Feature Selection
- Friday, 22nd of November, 11h: Guillaume Charpiat (TAU): Input similarity from the neural network perspective
- Friday, 15th of November, 11h: Balthazar Donon (TAU): Graph Neural Solvers for Power Systems
- Tuesday, 12th of November, 14h30: Jonathan Raiman (OpenAI / TAU): DeepType: résolution référentielle d’entités multilingues par l’évolution de systèmes de types neuronaux
- Friday, 8th of November, 11h: Mandar Chandorkar (TAU / Centrum Wiskunde & Informatica (CWI), Amsterdam): Dynamic Time Lag Regression: Predicting What & When
October
- Friday, 11th of October, 11h: Signe Riemer-Sørensen (SINTEF digital, Norway): Machine learning in the real world
- Monday, 7th of October, 15h (Amphi Shannon): Corentin Tallec (TAU)'s PhD defense
- Thursday, 3rd of October, 14h30: Lisheng Sun (TAU): Meta-learning as a Markov Decision Process (MDP)
- Tuesday, 1st of October, 14h: Jakob Runge (German Aerospace Center, Institute of Data Science, Jena): Perspectives for causal inference on time series in Earth system sciences
September
- Thursday, 12th of September, 14h30: Victor Berger (TAU): From abstract items to latent space to observed data and back: Compositional Variational Auto-Encoder, followed by Zhengying Liu (TAU): Overview and unifying conceptualization of Automated Machine Learning & AutoCV Challenges Analysis
- Wednesday, 11th of September: DataIA day on Safety & AI
, Turing building (INRIA Saclay); at 11h45 - 12h15: Julien Girard (CEA-list/TAU): Building Specifications for Perception Systems: Formal Proofs of Deep Networks Trained with Simulators
- Tuesday, 10th of September, 14h: Guillaume Doquet (TAU): Agnostic Feature Selection, followed by Pierre Wolinski (TAU): Learning with Random Learning Rates
- Tuesday, 3rd of September, 14h30: Luca Veyrin-Forrer (TAU): Learning To Run A Power Network
July
- Tuesday, 2nd of July, 14h30: Reda Alami (Orange/LRI): Memory bandits for decision-making in dynamic environments. Application to 5G optimization.
June
- Tuesday, 25th of June, 15h15: Victor Berger (TAU): Ensemblist Variational AutoEncoder: latent representation of semi-structured data, and Zhengying Liu (TAU): AutoCV Challenge Design and Baseline Results
- Tuesday, 18th of June, 14h30: Guillaume Doquet (TAU): Agnostic Feature Selection/ Sélection d'attributs agnostique
- Tuesday, 11th of June, 14h30: Ada Altieri (LPT, ENS): Introduction to the Thouless-Anderson-Palmer formalism and recent applications
- Tuesday 4th to Friday 7th of June (at ENS Cachan): summer school / workshop on Machine Learning & Formal Methods, details here
May
- Tuesday, 28th of May, 14h30: Talk canceled
- Wednesday 15th of May, 14h30: Erol Gelenbe (Imperial College): Réseaux Neuronaux Aléatoires - Solutions en Forme Produit, Apprentissage et Apprentissage Profond, Applications
- Tuesday, 14th of May, 14h30: Laurent Daudet (LightOn / Paris Diderot): Optical random features for large-scale machine learning
- Tuesday 7th of May, 14h30: Thibault Groueix & Pierre Alain Langlois(Imagine, ENPC): Deep Learning for 3D - Toward surface generation
- [DataIA] Thursday 2nd of May, 14h (Nano-Innov): Freddy Lecue (Chief AI Scientist @Thales Canada / INRIA Wimmics team): XAI - The story so far
April
- Tuesday, 23rd of April, 14h30: Julien Hay & Bich-Liên Doan (CentraleSupelec/LRI): Personnalisation de la recommandation d’articles d’actualité
- Thursday, 18th of April, 14h (salle des thèses 435, bâtiment 650): Big data, IA, sélection des données: causalités, corrélations, conséquences
- Diviyan Kalainathan: Causalité observationnelle, découverte de liens de cause à effet sans expériences randomisées
- Paola Tubaro: Sélectionné.e par une IA ? Algorithmes, inégalités, et les « humains dans la boucle »
- Tuesday, 16th of April, 14h30: Michele Alessandro Bucci (LIMSI): Control of chaotic dynamical system with Deep Reinforcement Learning approach
March
- Tuesday, 26th of March, 14h30 (usual room R2014): Saumya Jetley (University of Oxford): DeepInsight - An examination of the class decision functions learned by deep nets
- Tuesday, 12th of March, 14h30 (usual room R2014): Alexis Dubreuil (Group for Neural Theory, ENS): Reverse-engineering of low-rank recurrent neural networks
- Tuesday, 5th of March, 14h30 (usual room R2014): Gwendoline de Bie (ENSAE/TAU): Stochastic Deep Networks
February
- Tuesday, 26th of February, 14h30 (usual room R2014): Jean Barbier (ENS Paris & ICTP Trieste): Phase transitions in high-dimensional estimation and learning
- Wednesday, 20th of February, 11h30 (amphithéâtre Sophie Germain, Turing building, INRIA Saclay): [DataIA] Jérémie Mary (Critéo / Univ. Lille) Online advertising and strategic bidding
- Tuesday, 19th of February, 14h30 (usual room R2014): Loris Felardos (TAU team / IBPC): An Introduction to Graph Neural Networks
- For information: Friday, 15th of February: GT PASADENA seminar day
- Wednesday, 13th of February, 9h (Shannon amphitheatre, 660 building): Benjamin DONNOT's PhD defense: Deep Learning Methods for Predicting Flows in Power Grids: Novel Architectures and Algorithms
January
- For information: Wednesday, 30th of January, at IHES (full day): Statistics/Learning at Paris-Saclay
- Wednesday, 16th of January, 14h30 (usual room R2014): Corentin Tallec & Léonard Blier (TAU): T.B.A.
- Tuesday, 15th of January, 14h30 (amphi Shannon): Laurent Basara (TAU): The TrackML challenge: concept, methods and approaches
- Monday, 7th of January, 10h30 (usual room R2014): Jonathan Raiman (OpenAI): OpenAI Five: Atteindre un niveau professionnel à Dota en jouant contre soi-même
December
- Friday, 14th of December, 14h30 (usual room R2014): [ GT DeepNet
] Edouard Oyallon (CentraleSupelec): The shallow learning quest
- Thursday, 13th of December, 11h11 (usual room R2014): Julien Girard (TAU/CEA-list): A short introduction to formal methods and their applications for Robust Deep networks
November
- Thursday, 22nd of November, 11h11 (usual room R2014): Adrian Alan Pol (CERN): Machine Learning applications to CMS Data Quality Monitoring
- Thursday, 15th of November, 11h11 (usual room R2014): Philippe Esling (IRCAM): Artificial creative intelligence: variational inference and deep learning for modeling musical creativity slides
October
- Wednesday, 17th of October, 14h30 (Shannon amphitheatre): Pan Zhang (Institute of Theoretical Physics, Chinese Academy of Sciences): Solving Statistical Mechanics using Variational Autoregressive Networks
- Friday, 5th of October, 11h30 (usual room R2014): Thomas Lucas (Toth team, INRIA Grenoble): Mixed batches and symmetric discriminators for GAN training
September
- Thursday, 6th of September, 14h30 (usual room R2014): Mo Yang (TAU/CDS-LAL)'s end of internship: Prediction of storm trajectories
June
- Friday, 29th of June, 16h (Shannon amphitheatre): Thomas Schmitt (TAU)'s PhD defense: Appariements Collaboratifs des Offres et Demandes d'Emploi
- Thursday, 28th of June, 14h30 (Shannon amphitheatre): Alexandre Aussem (LIRIS - Lyon): Identifying irreducible disjoint factors in multivariate probability distributions: Application to multilabel learning
- Friday, 22nd of June, 11h (Shannon amphitheatre): Peter Bosman (CWI, Delft): Gene-pool Optimal Mixing Evolutionary Algorithms - From Foundations to Applications
- Friday, 22nd of June, 8h30 - 17h (room 1046): Isabelle Guyon's group seminar day: MEDI-CHAL / L2RPN
- June, Tuesday 12th (Shannon amphitheatre): Bérénice Huquet, Amandine Pierrot, Georges Hébrail (EDF Lab Paris-Saclay): Non-Intrusive Load Monitoring (NILM) problems and studies at EDF R&D
- June, Thursday 7th (17h): PhD seminar: Zhengying Liu: No Free Lunch Theorems
- June, Tuesday 5th: Martin Toth (TAU/CentraleSupelec): Deep Learning for skin disease diagnosis assistance
May
- May, Thursday 31st (Shannon Amphitheatre, 14h30): François Gonard's PhD defense: Cold-start recommendation: from algorithm portfolios to job applicant matching
- May, Wednesday 30th: Diviyan Kalainathan: Tutorial on Docker
- May, Tuesday 29th: Yufei Han (Symantec Research labs): Multi-label Learning with Highly Incomplete Data via Collaborative Embedding
- May, Thursday 24th: Stuart Russell (UC Berkeley): Provably Beneficial Artificial Intelligence
, at the DATAIA Institute (Turing building, 11am)
- May, Monday 7th: Jean-Noël Vittaut (Paris 8): General Game Playing pour les jeux à information parfaite ou imparfaite
- May, Friday 4th, 11h: Dominique Fourer (IRCAM): Analysis of non-stationary and multicomponent signals with applications to music information retrieval
April
- April, Wednesday 25th: Joon Kwon (CMAP): Mirror descent strategies for regret minimization and approachability
- April, Tuesday 17th: Bertrand Thirion (Parietal team, Neurospin, INRIA/CEA): Statistical inference for high-dimensional data & application to brain imaging
- April, Tuesday 10th: Berna Bakir Batu (TAU team): A Reinforcement Learning Approach for Simulating Cascading Failures in Power Grids
- April, Tuesday 3rd: Benjamin Donnot (TAU team): Fast Power system security analysis with Guided Dropout
March
- March, Tuesday 27th: Nizam Makdoud (TAU team): Intrinsic Motivation, Exploration and Deep Reinforcement Learning
- March, Tuesday 20th: Hugo Richard (Parietal/TAU teams, INRIA): Data based analysis of visual cortex using deep features of videos (more information...)
- March, Tuesday 13th: David Rousseau (Laboratoire de l'Accélérateur Linéaire (LAL), Orsay): TrackML : The High Energy Physics Tracking Challenge (more information...)
- March, Tuesday 6th: Ulisse Ferrari (Institut de la Vision): Neuroscience & big-data: Collective behavior in neuronal ensembles (more information...)
- March, Friday 2nd: François Landes (IPhT): Physicists using and playing with Machine Learning tools: two examples (more information...)
February
- February, Tuesday 27th: Wendy Mackay (INRIA/LRI ExSitu team): Human-Computer Partnerships: Leveraging machine learning to empower human users (more information...)
- February, Tuesday 20th: Jérémie Sublime (ISEP): Unsupervised learning for multi-source applications and satellite image processing (more information...)
- February, Friday 16th: Rémi Leblond (INRIA Sierra team): SeaRNN: training RNNs with global-local losses (more information...)
- February, Tuesday 13th: Zoltan Szabo (CMAP & DSI, École Polytechnique): Linear-time Divergence Measures with Applications in Hypothesis Testing (more information...)
January
- January, Tuesday 23rd (usual room 2014): Olivier Goudet & Diviyan Kalainathan (TAU): End-to-end Causal Generative Neural Networks (more information...)
- January, Friday 19th, whole day (IHES): workshop stats maths/info du plateau de Saclay (more information...
)
- January, Tuesday 9th (room 435, "salle des thèses", building 650): Michèle Sébag & Marc Schoenauer (TAU): Stochastic Gradient Descent: Going As Fast As Possible But Not Faster (more information...)
December
- December, Tuesday 19th, 14:30 (room 455, building 650): Antonio Vergari (LACAM, University of Bari 'Aldo Moro', Italy): Learning and Exploiting Deep Tractable Probabilistic Models (more information...)
- December, Wednesday 13th, 14:30 (room 445, building 650): Robin Girard (Mines ParisTech Sophia-Antipolis): Data mining and optimisation challenges for the energy transition (more information...)
- December, first week: break (NIPS)
November
- November, Wednesday 22th, 14:30 (room 2014): Marylou Gabrié (ENS Paris, Laboratoire de Physique Statistique): Mean-Field Framework for Unsupervised Learning with Boltzmann Machines (more information...)
- November, Friday 17th, 11:00 (Shannon amphitheatre): [ GT DeepNet
] Levent Sagun (IPHT Saclay): Over-Parametrization in Deep Learning (more information...)
- November, Wednesday 15th, 14:30 (room 2014): Diviyan Kalainathan & Olivier Goudet (TAU): Causal Generative Neural Networks (more information...)
- November, Thursday 9th, 11:00 (Shannon amphitheatre): Claire Monteleoni (CNRS-LAL / George Washington University): Machine Learning Algorithms for Climate Informatics, Sustainability, and Social Good (more information...)
October
- October, Tuesday 24th, 14:30 (Shannon amphitheatre): Benjamin Guedj (MODAL team, Inria Lille): A quasi-Bayesian perspective to NMF: theory and applications (more information...)
- October, Wednesday 18th, 14:30 (room 2014): Théophile Sanchez (TAU): End-to-end Deep Learning Approach for Demographic History Inference (more information...)
- October, Wednesday 11th, 14:00 (room 2014): Victor Estrade (TAU): Robust Deep Learning : A case study (more information...)
- October, Wednesday 4th, 14:30 (room 2014): Hugo Richard (Parietal/TAU): Data based alignment of brain fmri images (more information...)
September
- September, Tuesday 19th, 11:00 (Shannon amphitheatre): Carlo Lucibello (Politecnico di Torino): Probing the energy landscape of Artificial Neural Networks (more information...)
July
- July, Tuesday 4th, from 11:00 to 13:00 (Shannon amphitheatre): presentation of Brice Bathellier's team + MLspike by Thomas Deneux (more information...)
June
- June, Friday 30th, 14:30 (room 2014): internships presentation by Giancarlo Fissore: Learning dynamics of Restricted Boltzmann Machines, and by Clément Leroy: Free Energy Landscape in a Restricted Boltzmann Machine (RBM) (more information...)
- June, Thursday 29th, 14:30 (Shannon amphitheatre): [ GT DeepNet
] Alexandre Barachant: Information Geometry: A framework for manipulation and classification of neural time series (more information...)
- June, Tuesday 27th, 14:30 (room 2014) Réda Alami et Raphaël Féraud (Orange Labs): Memory Bandits : A bayesian Approach for the Switching Bandit Problem (more information...)
- June, Monday 12th, 14:30 (Shannon amphitheatre): [ GT DeepNet
] Romain Couillet (Centrale-Supélec): A Random Matrix Framework for BigData Machine Learning (more information...)
May
- May, Wednesday 24th, 16:00 (room 2014): Priyanka Mandikal (TAU): Anatomy Localization in Medical Images using Neural Networks (more information...)
April
- April, Friday 28th, 14:30 (Shannon amphitheatre): [ GT DeepNet
] Jascha Sohl-dickstein (Google Brain): Deep Unsupervised Learning using Nonequilibrium Thermodynamics (more information...)
- April, Tuesday 3rd: Thomas Schmitt: RecSys challenge 2017 (more information...)
March
- March, Thursday 2nd, 14:30 (Shannon amphitheatre): Marta Soare (Aalto University): Sequential Decision Making in Linear Bandit Setting (more information...)
February
- February 22nd, 11h: Enrico Camporeale (CWI): Machine learning for Space-Weather forecasting
- February, Thursday 16th (Shannon amphi.), 14h30: [ GT DeepNet
] Corentin Tallec: Unbiased Online Recurrent Optimization (more information...)
- February 14th (Shannon amphi.), 14h: [ GT DeepNet
] Victor Berger (Thales Services, ThereSIS): VAE/GAN as a generative model (more information...)
January
- January 25th, 10h30: Romain Julliard (Muséum National d'Histoire Naturelle): 65 Millions d'Observateurs (more information...)
- January 24th: Daniela Pamplona (Biovision team, INRIA Sophia-Antipolis / TAO): Data Based Approaches in Retinal Models and Analysis (more information...)
November
- November 30th: Martin Riedmiller (Google DeepMind). Deep Reinforcement learning for learning machines (more information...)
- November 29th: Amaury Habrard (Universite Jean Monnet de Saint-Etienne). Domain Adaptation with Optimal Transport: Mapping Estimation and Theory (more information...)
- November 24th: [ GT DeepNet
] Rico Sennrich (University of Edinburgh). Neural Machine Translation: Breaking the Performance Plateau (more information...)
June
- June 28th: Lenka Zdeborova (CEA,Ipht). Solvable models of unsupervised feature learning LRI_matrix_fact.pdf
Mai
- May 3rd: Emile Contal (ENS-Cachan). The geometry of Gaussian processes and Bayesian optimization. slides_semstat16.pdf
April
- April 26: Marc Bellemare (Google DeepMind). Eight Years of Research with the Atari 2600 (more information...)
- April 12: Mikael Kuusela (EPFL). Shape-constrained uncertainty quantification in unfolding elementary particle spectra at the Large Hadron Collider.(more information...)
March
- March 22nd: Matthieu Geist (Supélec Metz): Reductions from inverse reinforcement learning to supervised learning (more information...)
- March 15: Richard Wilkinson (University of Sheffield): Using surrogate models to accelerate parameter estimation for complex simulators (more information...)
- March 1st: Pascal Germain (Université Laval, Québec): A Representation Learning Approach for Domain Adaptation (more information...)
February
- February 9th: François Dufour (INRIA Bordeaux) (more information...)
January
- January 26th: Laurent Massoulié: Models of collective inference.(more information...).
- January 19th: Sébastien Gadat: Regret bounds for Narendra-Shapiro bandit algorithms (more information...)..
December
- December 15th: Joon Kwon: SPARSE REGRET MINIMIZATION.(more information...).
November
- November 19th: Phillipe Sampaio: A derivative-free trust-funnel method for constrained nonlinear optimization (more information...).
October
- October 27: Audrey Durand: Bandits for healthcare (more information...).
- October 20th: Jean Lafond: Low Rank Matrix Completion with Exponential Family Noise (more information...).
- October 13th
- Flora Jay:Inferring past and present demography from genetic data (more information...).
- Marcus Gallagher: Engineering Features for the Analysis and Comparison Black-box Optimization Problems and Algorithms (more information...).
September
- Sept. 28th
- Olivier Pietquin, Approximate Dynamic Programming for Two-Player Zero-Sum Markov Games OlivierPietquin_ICML15.pdf
- Francois Laviolette, Domain Adaptation (slides soon)
July
- July 2nd:Alaa Saade:MaCBetH : Matrix Completion with the Bethe Hessian(more information...)
June
- June 15th: Claire Monteleoni:Climate Informatics: Recent Advances and Challenge Problems for Machine Learning in Climate Science
- June 2nd: Robyn Francon: Reversing Operators for Semantic Backpropagation
May
- May 18th:Andras Gyorgy:Adaptive Monte Carlo via Bandit Allocation
April
- April 28th:Vianney Perchet:Optimal Sample Size in Multi-Phase Learning(more information...)
- April 27th:Hédi Soula, TBA
- April 21th: Gregory Grefenstette, INRIA Saclay: Personal semantics(more information...)
- April 7th: Paul Honeine: Relever deux défis majeurs en apprentissage par méthodes à noyaux:problème de pré-image et apprentissage en ligne (more information...)
March
- March 31th: Bruno Scherrer (Inria Nancy): Non-Stationary Modified Policy Iteration (more information...)
- March 24th: Christophe Schülke(ESPCI): Community detection with modularity: a statistical physics approach (more information...)
- March 10th: Balazs Kegl: Rapid Analytics and Model Prototyping (more information...)
February
- February 24th: Madalina Drugan (Vrije Universiteit Brussel, Belgium): Multi-objective multi-armed bandits (more information...)
- February 20th: Holger Hoos (University of British Columbia, Canada): séminaire MSR - see the slides
- February 17th :Aurélien Bellet: The Frank-Wolfe Algorithm: Recent Results and Applications to High-Dimensional Similarity Learning and Distributed Optimization more information...
- February 10th, Manuel Lopes 15interlearnteach.pdf
January
- January 27th :Raphaël Baillyra: Tensor factorization for multi-relational learning ((more information...)
- January 13th : Francesco Caltagirone: On convergence of Approximate Message Passing (talk_Caltagirone.pdf)
- January 6th : Emilie Kaufmann: Bayesian and frequentist strategies for sequential resource allocation (Emilie_Kauffman.pdf)
November
- November 4th :Joaquin Vanschoren:OpenML: Networked science in machine learning
October
- Oct. 28th,
- Antoine Bureau, "Bellmanian Bandit Network"
References:
-1- Manuel Lopes, Tobias Lang, Marc Toussaint, and Pierre-Yves Oudeyer. Exploration in model-based reinforcement learning by empirically estimating learning progress. In Neural Information Processing System (NIPS), 2012.
- Basile Mayeur
Taking inspiration from inverse reinforcement learning, the proposed Direct Value Learning for Reinforcement Learning (DIVA) approach uses light priors to gener- ate inappropriate behavior’s, and use the corresponding state sequences to directly learn a value function. When the transition model is known, this value function directly defines a (nearly) optimal controller. Otherwise, the value function is extended to the (state,action) space using off-policy learning.
The experimental validation of DIVA on the Mountain car shows the robustness of the approach comparatively to SARSA, based on the assumption that the tar- get state is known. Lighter assumptions are considered in the Bicycle problem, showing the robustness of DIVA in a model-free setting.
- Thomas Schmitt, "Exploration / exploitation: a free energy-based criterion"
- Oct. 14th, Holger Hoos Slides attached.
September
- Sept. 29th, Rich Caruana
Old seminars