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Friedemann Zenke
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Cited by
Year
Continual learning through synaptic intelligence
F Zenke, B Poole, S Ganguli
International Conference on Machine Learning, 3987-3995, 2017
24532017
Surrogate gradient learning in spiking neural networks: Bringing the power of gradient-based optimization to spiking neural networks
EO Neftci, H Mostafa, F Zenke
IEEE Signal Processing Magazine 36 (6), 51-63, 2019
10382019
A deep learning framework for neuroscience
BA Richards, TP Lillicrap, P Beaudoin, Y Bengio, R Bogacz, ...
Nature neuroscience 22 (11), 1761-1770, 2019
7812019
Inhibitory plasticity balances excitation and inhibition in sensory pathways and memory networks
TP Vogels, H Sprekeler, F Zenke, C Clopath, W Gerstner
Science 334 (6062), 1569-1573, 2011
7312011
Superspike: Supervised learning in multilayer spiking neural networks
F Zenke, S Ganguli
Neural computation 30 (6), 1514-1541, 2018
5602018
Diverse synaptic plasticity mechanisms orchestrated to form and retrieve memories in spiking neural networks
F Zenke, EJ Agnes, W Gerstner
Nature communications 6 (1), 6922, 2015
3502015
Burst-dependent synaptic plasticity can coordinate learning in hierarchical circuits
A Payeur, J Guerguiev, F Zenke, BA Richards, R Naud
Nature neuroscience 24 (7), 1010-1019, 2021
2192021
The remarkable robustness of surrogate gradient learning for instilling complex function in spiking neural networks
F Zenke, TP Vogels
Neural computation 33 (4), 899-925, 2021
1972021
The temporal paradox of Hebbian learning and homeostatic plasticity
F Zenke, W Gerstner, S Ganguli
Current opinion in neurobiology 43, 166-176, 2017
1962017
Hebbian plasticity requires compensatory processes on multiple timescales
F Zenke, W Gerstner
Philosophical Transactions of the Royal Society B 372 (1715), 20160259, 2017
1892017
Synaptic plasticity in neural networks needs homeostasis with a fast rate detector
F Zenke, G Hennequin, W Gerstner
PLoS computational biology 9 (11), e1003330, 2013
1742013
The heidelberg spiking data sets for the systematic evaluation of spiking neural networks
B Cramer, Y Stradmann, J Schemmel, F Zenke
IEEE Transactions on Neural Networks and Learning Systems 33 (7), 2744-2757, 2020
1592020
Inhibitory Synaptic Plasticity-Spike timing dependence and putative network function.
H Sprekeler, TP Vogels, RC Froemke, N Doyon, M Gilson, JS Haas, R Liu, ...
Frontiers in Neural Circuits 7, 2013
1562013
Entrance channel dependence of quasifission in reactions forming
RG Thomas, DJ Hinde, D Duniec, F Zenke, M Dasgupta, ML Brown, ...
Physical Review C 77 (3), 034610, 2008
1232008
Inference of neuronal network spike dynamics and topology from calcium imaging data
H Lütcke, F Gerhard, F Zenke, W Gerstner, F Helmchen
Frontiers in neural circuits 7, 201, 2013
1092013
Determination of the η′-nucleus optical potential
M Nanova, V Metag, EY Paryev, D Bayadilov, B Bantes, R Beck, ...
Physics Letters B 727 (4-5), 417-423, 2013
982013
Limits to high-speed simulations of spiking neural networks using general-purpose computers
F Zenke, W Gerstner
Frontiers in neuroinformatics 8, 76, 2014
932014
Surrogate gradients for analog neuromorphic computing
B Cramer, S Billaudelle, S Kanya, A Leibfried, A Grübl, V Karasenko, ...
Proceedings of the National Academy of Sciences 119 (4), e2109194119, 2022
92*2022
Brain-inspired learning on neuromorphic substrates
F Zenke, EO Neftci
Proceedings of the IEEE 109 (5), 935-950, 2021
802021
Visualizing a joint future of neuroscience and neuromorphic engineering
F Zenke, SM Bohté, C Clopath, IM Comşa, J Göltz, W Maass, ...
Neuron 109 (4), 571-575, 2021
652021
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