Friedemann Zenke
Affiliations: | Centre for Neural Circuits and Behaviour | University of Oxford, Oxford, United Kingdom |
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Parents
Sign in to add mentorWulfram Gerstner | grad student | 2009-2014 | |
Tim Vogels | post-doc | 2017- | |
Surya Ganguli | post-doc | 2015-2017 | (Physics Tree) |
Children
Sign in to add traineeTianlin Liu | grad student | 2019- | Friedrich Miescher Institute Basel |
Julia Gygax | grad student | 2022- | Friedrich Miescher Institute |
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Publications
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Halvagal MS, Zenke F. (2023) The combination of Hebbian and predictive plasticity learns invariant object representations in deep sensory networks. Nature Neuroscience. 26: 1906-1915 |
Cramer B, Billaudelle S, Kanya S, et al. (2022) Surrogate gradients for analog neuromorphic computing. Proceedings of the National Academy of Sciences of the United States of America. 119 |
Wu YK, Zenke F. (2021) Nonlinear transient amplification in recurrent neural networks with short-term plasticity. Elife. 10 |
Payeur A, Guerguiev J, Zenke F, et al. (2021) Author Correction: Burst-dependent synaptic plasticity can coordinate learning in hierarchical circuits. Nature Neuroscience. 24: 1780 |
Payeur A, Guerguiev J, Zenke F, et al. (2021) Burst-dependent synaptic plasticity can coordinate learning in hierarchical circuits. Nature Neuroscience |
Zenke F, Bohté SM, Clopath C, et al. (2021) Visualizing a joint future of neuroscience and neuromorphic engineering. Neuron. 109: 571-575 |
Zenke F, Vogels TP. (2021) The Remarkable Robustness of Surrogate Gradient Learning for Instilling Complex Function in Spiking Neural Networks. Neural Computation. 1-27 |
Cramer B, Stradmann Y, Schemmel J, et al. (2020) The Heidelberg Spiking Data Sets for the Systematic Evaluation of Spiking Neural Networks. Ieee Transactions On Neural Networks and Learning Systems |
Richards BA, Lillicrap TP, Beaudoin P, et al. (2019) A deep learning framework for neuroscience. Nature Neuroscience. 22: 1761-1770 |
Neftci EO, Mostafa H, Zenke F. (2019) Surrogate Gradient Learning in Spiking Neural Networks: Bringing the Power of Gradient-based optimization to spiking neural networks Ieee Signal Processing Magazine. 36: 51-63 |