Követés
Sebastian Goldt
Cím
Hivatkozott rá
Hivatkozott rá
Év
Modelling the influence of data structure on learning in neural networks: the hidden manifold model
S Goldt, M Mézard, F Krzakala, L Zdeborová
Physical Review X 10 (4), 041044, 2019
191*2019
Learning curves of generic features maps for realistic datasets with a teacher-student model
B Loureiro, C Gerbelot, H Cui, S Goldt, F Krzakala, M Mezard, ...
Advances in Neural Information Processing Systems 34, 18137-18151, 2021
1452021
Dynamics of stochastic gradient descent for two-layer neural networks in the teacher-student setup
S Goldt, MS Advani, AM Saxe, F Krzakala, L Zdeborová
Advances in Neural Information Processing Systems 32, 6979--6989, 2019
1372019
Stochastic thermodynamics of resetting
J Fuchs*, S Goldt*, U Seifert
EPL (Europhysics Letters) 113 (6), 60009, 2016
1142016
The gaussian equivalence of generative models for learning with shallow neural networks
S Goldt, B Loureiro, G Reeves, F Krzakala, M Mézard, L Zdeborová
Mathematical and Scientific Machine Learning, 426-471, 2022
922022
Classifying high-dimensional Gaussian mixtures: Where kernel methods fail and neural networks succeed
M Refinetti, S Goldt, F Krzakala, L Zdeborová
International Conference on Machine Learning, 8936-8947, 2021
702021
Stochastic thermodynamics of learning
S Goldt, U Seifert
Physical review letters 118 (1), 010601, 2017
652017
Continual learning in the teacher-student setup: Impact of task similarity
S Lee, S Goldt, A Saxe
International Conference on Machine Learning, 6109-6119, 2021
452021
Align, then memorise: the dynamics of learning with feedback alignment
M Refinetti, S d’Ascoli, R Ohana, S Goldt
International Conference on Machine Learning, 8925-8935, 2021
37*2021
Data-driven emergence of convolutional structure in neural networks
A Ingrosso, S Goldt
Proceedings of the National Academy of Sciences 119 (40), e2201854119, 2022
242022
The gaussian equivalence of generative models for learning with two-layer neural networks
S Goldt, G Reeves, M Mézard, F Krzakala, L Zdeborová
232020
Zinc finger proteins and the 3D organization of chromosomes
CJ Feinauer, A Hofmann, S Goldt, L Liu, G Mate, DW Heermann
Advances in protein chemistry and structural biology 90, 67-117, 2013
192013
Thermodynamic efficiency of learning a rule in neural networks
S Goldt, U Seifert
New Journal of Physics 19 (11), 113001, 2017
162017
Neural networks trained with SGD learn distributions of increasing complexity
M Refinetti, A Ingrosso, S Goldt
International Conference on Machine Learning, 28843-28863, 2023
152023
Perspectives on adaptive dynamical systems
J Sawicki, R Berner, SAM Loos, M Anvari, R Bader, W Barfuss, N Botta, ...
Chaos 33, 071501, 2023
122023
Generalisation dynamics of online learning in over-parameterised neural networks
S Goldt, MS Advani, AM Saxe, F Krzakala, L Zdeborová
ICML 2019 Workshop on Theoretical Physics for Deep Learning, 2019
122019
The dynamics of representation learning in shallow, non-linear autoencoders
M Refinetti, S Goldt
International Conference on Machine Learning 18499-18519, 2022
92022
A simple linear algebra identity to optimize large-scale neural network quantum states
R Rende, LL Viteritti, L Bardone, F Becca, S Goldt
arXiv preprint arXiv:2310.05715, 2023
82023
Redundant representations help generalization in wide neural networks
D Doimo, A Glielmo, S Goldt, A Laio
Advances in Neural Information Processing Systems 35, in press, 2022
8*2022
Maslow's Hammer for Catastrophic Forgetting: Node Re-Use vs Node Activation
S Lee, SS Mannelli, C Clopath, S Goldt, A Saxe
International Conference on Machine Learning, PMLR 162:12455-12477, 2022
72022
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