Getting Started
Schedule
Tutorials
Main Conference
Invited Talks
Panels
Orals
Papers
Spotlight Posters
Competitions
Datasets and Benchmarks
Journal Track
Creative AI Track
Outstanding Paper Awards
Workshops
Community
Affinity Events
Socials
Mentorship
Town Hall
Careers / Recruiting
Help
Presenters Instructions
Moderators Instructions
FAQ
Helpdesk in RocketChat
Organizers
Login
firstbacksecondback
Search All 2021 Events
Filter by Keyword:
Active Learning
Adversarial Robustness and Security
Bandits
Causality
Clustering
Continual Learning
Contrastive Learning
Deep Learning
Domain Adaptation
Fairness
Federated Learning
Few Shot Learning
Generative Model
Graph Learning
Interpretability
Kernel Methods
Language
Machine Learning
Meta Learning
Neuroscience
Online Learning
Optimal Transport
Optimization
Privacy
Reinforcement Learning and Planning
Representation Learning
Robustness
Self-Supervised Learning
Semi-Supervised Learning
Theory
Transfer Learning
Transformers
Vision
771 Results
<<
<
Page 1 of 65
>
>>
Workshop
Explaining machine-learned particle-flow reconstruction
Farouk Mokhtar · Raghav Kansal · Daniel Diaz · Javier Duarte · Maurizio Pierini · jean-roch vlimant
Affinity Workshop
The impact of weather information on machine-learning probabilistic electricity demand predictions
Yifu Ding
Workshop
An Imperfect machine to search for New Physics: systematic uncertainties in a machine-learning based signal extraction
Gaia Grosso · Maurizio Pierini
Poster
Tue 8:30
Nonsmooth Implicit Differentiation for Machine-Learning and Optimization
Jérôme Bolte · Tam Le · Edouard Pauwels · Tony Silveti-Falls
Poster
Thu 8:30
Fixes That Fail: Self-Defeating Improvements in Machine-Learning Systems
Ruihan Wu · Chuan Guo · Awni Hannun · Laurens van der Maaten
Poster
Tue 8:30
Learning-to-learn non-convex piecewise-Lipschitz functions
Maria-Florina Balcan · Mikhail Khodak · Dravyansh Sharma · Ameet Talwalkar
Affinity Workshop
Machine Learning-based Mobility Assessment from Passively Sensed Digital Biomarkers
Emese Sükei · Pablo Olmos
Workshop
Tue 8:30
Georg Seelig - Machine learning-guided design of functional DNA, RNA and protein sequences
Poster
Thu 0:30
Meta-Learning for Relative Density-Ratio Estimation
Atsutoshi Kumagai · Tomoharu Iwata · Yasuhiro Fujiwara
Poster
Tue 8:30
Generalization Bounds for Meta-Learning via PAC-Bayes and Uniform Stability
Alec Farid · Anirudha Majumdar
Poster
Tue 8:30
Noether Networks: meta-learning useful conserved quantities
Ferran Alet · Dylan Doblar · Allan Zhou · Josh Tenenbaum · Kenji Kawaguchi · Chelsea Finn
Poster
Tue 8:30
On sensitivity of meta-learning to support data
Mayank Agarwal · Mikhail Yurochkin · Yuekai Sun
NeurIPS uses cookies to remember that you are logged in. By using our websites, you agree to the placement of cookies.
Our Privacy Policy »
Accept Cookies