Léon Bottou
34 papers · 2005–2025 · 9 conferences · across top CS/AI conferences
Achievements
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🧭 Keyword Pioneer 🌈 Renaissance Researcher (5) 🌉 Interdisciplinary Bridge 🗺️ Taxonomy Completionist (19) 🐣 Hot Topic Early Bird
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Taxonomy Completionist
(19)
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Conference Polyglot
(9)
🧭
Keyword Pioneer
🌟
Keyword Trendsetter Combo
(6)
🏆
Grand Slam
🔬
Deep Specialist
(10)
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Unstoppable
(8)
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Conference Pioneer
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Keyword Collector
(61)
❓
The Questioner
💎
Century Club
(34)
📈
Trend Setter
Conferences
JMLR (9)
ICML (7)
NIPS (6)
AISTATS (3)
CVPR (3)
ICLR (3)
AAAI (1)
EMNLP (1)
ICCV (1)
Top co-authors
Keywords
stochastic gradient descent
(6)
online learning
(3)
transfer learning
(3)
support vector machine
(3)
quasi-newton method
(2)
convolutional neural network
(2)
bias mitigation
(2)
causal inference
(2)
distributionally robust optimization
(2)
large scale learning
(2)
active learning
(2)
convergence rate
(2)
feature learning
(2)
representation learning
(2)
nonconvex optimization
(2)
stochastic optimization
(2)
object classification
(2)
out-of-distribution generalization
(2)
domain generalization
(2)
adaptive gradient
(2)
Papers
Memory Mosaics
ICLR 2025
MagicPIG: LSH Sampling for Efficient LLM Generation
ICLR 2025
Model Ratatouille: Recycling Diverse Models for Out-of-Distribution Generalization
ICML 2023
Birth of a Transformer: A Memory Viewpoint
NIPS 2023
Active Self-Supervised Learning: A Few Low-Cost Relationships Are All You Need
ICCV 2023
Learning useful representations for shifting tasks and distributions
ICML 2023
On the Relation between Distributionally Robust Optimization and Data Curation (Student Abstract)
AAAI 2022
The Effects of Regularization and Data Augmentation are Class Dependent
NIPS 2022
Rich Feature Construction for the Optimization-Generalization Dilemma
ICML 2022
On Distributionally Robust Optimization and Data Rebalancing
AISTATS 2022
AdaGrad stepsizes: Sharp convergence over nonconvex landscapes
JMLR 2020
Symplectic Recurrent Neural Networks
ICLR 2020
First-Order Adversarial Vulnerability of Neural Networks and Input Dimension
ICML 2019
Cold Case: The Lost MNIST Digits
NIPS 2019
On the Ineffectiveness of Variance Reduced Optimization for Deep Learning
NIPS 2019
AdaGrad Stepsizes: Sharp Convergence Over Nonconvex Landscapes
ICML 2019
An efficient distributed learning algorithm based on effective local functional approximations
JMLR 2018
SING: Symbol-to-Instrument Neural Generator
NIPS 2018
Discovering Causal Signals in Images
CVPR 2017
Wasserstein Generative Adversarial Networks
ICML 2017
No Regret Bound for Extreme Bandits
AISTATS 2016
A Lower Bound for the Optimization of Finite Sums
ICML 2015
Is Object Localization for Free? - Weakly-Supervised Learning With Convolutional Neural Networks
CVPR 2015
Learning and Transferring Mid-Level Image Representations using Convolutional Neural Networks
CVPR 2014
Learning Image Embeddings using Convolutional Neural Networks for Improved Multi-Modal Semantics
EMNLP 2014
Counterfactual Reasoning and Learning Systems: The Example of Computational Advertising
JMLR 2013
Natural Language Processing (Almost) from Scratch
JMLR 2011
Erratum: SGDQN is Less Careful than Expected
JMLR 2010
Guarantees for Approximate Incremental SVMs
AISTATS 2010
SGD-QN: Careful Quasi-Newton Stochastic Gradient Descent
JMLR 2009
The Tradeoffs of Large Scale Learning
NIPS 2007
The Need for Open Source Software in Machine Learning
JMLR 2007
Large Scale Transductive SVMs
JMLR 2006
Fast Kernel Classifiers with Online and Active Learning
JMLR 2005