Remi Gribonval
20 papers · 2013–2025 · 7 conferences · across top CS/AI conferences
Achievements
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(7)
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Academic Marathon
(12)
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ICLR (5)
ICML (5)
NIPS (5)
JMLR (2)
AISTATS (1)
CVPR (1)
ICCV (1)
Top co-authors
Research topics
Keywords
compressive sensing
(2)
compressed sensing
(1)
sparse regularization
(1)
blind source separation
(1)
convex optimization
(1)
bayesian inference
(1)
spectral clustering
(1)
density estimation
(1)
optimal transport
(1)
posterior distribution
(1)
bayesian estimation
(1)
probability distribution
(1)
random sampling
(1)
blind channel identification
(1)
differential privacy
(1)
laplacian matrix
(1)
statistical estimation
(1)
maximum mean discrepancy
(1)
restricted isometry property
(1)
wasserstein distance
(1)
Papers
A Rescaling-Invariant Lipschitz Bound Based on Path-Metrics for Modern ReLU Network Parameterizations
ICML 2025
Transformative or Conservative? Conservation laws for ResNets and Transformers
ICML 2025
A path-norm toolkit for modern networks: consequences, promises and challenges
ICLR 2024
Revisiting RIP Guarantees for Sketching Operators on Mixture Models
JMLR 2024
Keep the Momentum: Conservation Laws beyond Euclidean Gradient Flows
ICML 2024
Abide by the law and follow the flow: conservation laws for gradient flows
NIPS 2023
Controlling Wasserstein Distances by Kernel Norms with Application to Compressive Statistical Learning
JMLR 2023
Self-supervised learning with rotation-invariant kernels
ICLR 2023
Private Statistical Estimation of Many Quantiles
ICML 2023
Does a sparse ReLU network training problem always admit an optimum ?
NIPS 2023
Training with Quantization Noise for Extreme Model Compression
ICLR 2021
Learning with minibatch Wasserstein : asymptotic and gradient properties
AISTATS 2020
And the Bit Goes Down: Revisiting the Quantization of Neural Networks
ICLR 2020
Equi-normalization of Neural Networks
ICLR 2019
Don't take it lightly: Phasing optical random projections with unknown operators
NIPS 2019
MULAN: A Blind and Off-Grid Method for Multichannel Echo Retrieval
NIPS 2018
Learning a Complete Image Indexing Pipeline
CVPR 2018
SUBIC: A Supervised, Structured Binary Code for Image Search
ICCV 2017
Compressive Spectral Clustering
ICML 2016
Reconciling "priors" & "priors" without prejudice?
NIPS 2013