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Wulfram Gerstner
Wulfram Gerstner in 2018
Born1963 (age 60–61)
CitizenshipGerman
Swiss
AwardsValentino Braitenberg Award for Computational Neuroscience 2018
Academic background
Alma mater University of Tübingen
Ludwig Maximilian University of Munich
Academic work
Discipline Neuroscience
Sub-discipline Computational neuroscience
Institutions École Polytechnique Fédérale de Lausanne (EPFL)
Main interestsDynamic models neural activity

Spike-timing-dependent plasticity (STDP)
Neuronal coding
Hippocampal models

Spatial representation
Website https://www.epfl.ch/labs/lcn/

Wulfram Gerstner (born 1963 in Heilbronn) is a German and Swiss computational neuroscientist. His research focuses on neural spiking patterns in neural networks, and their connection to learning, spatial representation and navigation. [1] Since 2006 Gerstner has been a full professor of Computer Science and Life Sciences at École Polytechnique Fédérale de Lausanne (EPFL), where he also serves as a Director of the Laboratory of Computational Neuroscience. [2]

Career

Gerstner studied physics at the University of Tübingen and at the Ludwig Maximilian University of Munich. In 1989, he received his Master's degree with a thesis in experimental quantum optics. He then joined the theoretical biophysics group of William Bialek at University of California, Berkeley as a visiting researcher. [3] He received his PhD in theoretical physics from the Technical University of Munich in 1993 under supervision from Leo van Hemmen. He did post doctoral work at Brandeis University [4] and at Technical University of Munich, [5] where he worked in theoretical neuroscience.

In 1996 he was nominated as assistant professor and in February 2001 he was promoted as an associate professor with tenure at EPFL. In August 2006 Gerstner was appointed full professor at EPFL in both the School of Computer and Communication Sciences and the School of Life Sciences. [2] [6]

Research

Gerstner's research is focused on models of spiking neurons, [7] [8] spike-timing-dependent plasticity (STDP), [9] neuronal coding in single neurons and neuron populations. [10] He also investigates models of the hippocampus and their application in the spatial representation for navigation of rat-like autonomous agents. [11]

He is also one of the initiators of The Deep Artificial Composer (DAC), a deep-learning algorithm that can generate melodies by imitating a given style of music. [12]

Books

Gerstner is the author of neuroscientific text books such as Spiking Neuron Models: Single neurons, populations, plasticity (Gerstner, W. and Kistler, W.M., 2002, Cambridge University Press) that introduced the field of spiking neural networks, [8] and Neuronal dynamics: From single neurons to networks and models of cognition (Gerstner, W., Kistler, W.M., Naud, R. and Paninski, L., 2014, Cambridge University Press) on the field of computational neuroscience that was also published as an online version including exercises and video lectures. [13]

Selected publications

  • Gerstner, Wulfram (2000). "Population Dynamics of Spiking Neurons: Fast Transients, Asynchronous States, and Locking" (PDF). Neural Computation. 12 (1): 43–89. doi: 10.1162/089976600300015899. PMID  10636933. S2CID  7832768.
  • Clopath, Claudia; Büsing, Lars; Vasilaki, Eleni; Gerstner, Wulfram (2010). "Connectivity reflects coding: A model of voltage-based STDP with homeostasis" (PDF). Nature Neuroscience. 13 (3): 344–352. doi: 10.1038/nn.2479. hdl: 10044/1/21440. PMID  20098420. S2CID  8046538.
  • Gerstner, Wulfram; Kempter, Richard; Van Hemmen, J. Leo; Wagner, Hermann (1996). "A neuronal learning rule for sub-millisecond temporal coding" (PDF). Nature. 383 (6595): 76–78. Bibcode: 1996Natur.383...76G. doi: 10.1038/383076a0. PMID  8779718. S2CID  4319500.
  • Brette, Romain; Gerstner, Wulfram (2005). "Adaptive Exponential Integrate-and-Fire Model as an Effective Description of Neuronal Activity" (PDF). Journal of Neurophysiology. 94 (5): 3637–3642. doi: 10.1152/jn.00686.2005. PMID  16014787.
  • Kempter, Richard; Gerstner, Wulfram; Van Hemmen, J. Leo (1999). "Hebbian learning and spiking neurons" (PDF). Physical Review E. 59 (4): 4498–4514. Bibcode: 1999PhRvE..59.4498K. doi: 10.1103/PhysRevE.59.4498.

Distinctions

Gerstner has been an editorial board member of journals such as Science, [14] The Journal of Neuroscience, Network: Computation in Neural Systems, Journal of Computational Neuroscience, [2] and Neural Computation.

He is the recipient of the Valentino Braitenberg Award for Computational Neuroscience 2018 [15] and in 2010 he was awarded an ERC Advanced Grant by the European Research Council. [16] Gerstner is an elected member of the Academy of Sciences and Literature Mainz. [17]

References

  1. ^ "Sechs neue Mitglieder in der Akademie der Wissenschaften und der Literatur | Mainz". idw-online.de. Retrieved 5 November 2020.
  2. ^ a b c "Wulfram Gerstner". people.epfl.ch. Retrieved 4 September 2020.
  3. ^ GERSTNER, Wulfram (1991). "Associative Memory in a Network of 'Biological' Neurons" (PDF). Advances in Neural Information Processing Systems. 3: 84–90. Archived from the original (PDF) on 6 September 2020.
  4. ^ Gerstner, Wulfram; Abbott, L.F. (1 January 1997). "Learning Navigational Maps Through Potentiation and Modulation of Hippocampal Place Cells". Journal of Computational Neuroscience. 4 (1): 79–94. doi: 10.1023/A:1008820728122. ISSN  1573-6873. PMID  9046453. S2CID  6616177.
  5. ^ GERSTNER, Wulfram (1995). "Time structure of the activity in neural network models". Physical Review E. 51 (1): 738–758. Bibcode: 1995PhRvE..51..738G. doi: 10.1103/PhysRevE.51.738. PMID  9962697.
  6. ^ "Wulfram Gerstner CV". lcnwww.epfl.ch. Retrieved 4 September 2020.
  7. ^ Brette, Romain; Gerstner, Wulfram (1 November 2005). "Adaptive Exponential Integrate-and-Fire Model as an Effective Description of Neuronal Activity" (PDF). Journal of Neurophysiology. 94 (5): 3637–3642. doi: 10.1152/jn.00686.2005. ISSN  0022-3077. PMID  16014787.
  8. ^ a b Gerstner, Wulfram. (2002). Spiking neuron models : single neurons, populations, plasticity. Kistler, Werner M., 1969–. Cambridge, U.K.: Cambridge University Press. ISBN  0-511-07817-X. OCLC  57417395.
  9. ^
  10. ^
  11. ^ Sheynikhovich, Denis; Chavarriaga, Ricardo; Strösslin, Thomas; Arleo, Angelo; Gerstner, Wulfram (1 July 2009). "Is there a geometric module for spatial orientation? Insights from a rodent navigation model" (PDF). Psychological Review. 116 (3): 540–566. doi: 10.1037/a0016170. ISSN  1939-1471. PMID  19618986.
  12. ^
  13. ^
  14. ^ "Science Magazine Masterhead". 12 December 2008. Retrieved 4 September 2020.
  15. ^ "Wulfram Gerstner receives Valentino Braitenberg Award 2018 — Bernstein Netzwerk Computational Neuroscience". www.bernstein-network.de. Retrieved 4 September 2020.
  16. ^ "ERC Advanced Grant 2010" (PDF). 20 January 2010. Retrieved 10 September 2020.
  17. ^ "Prof. Dr. Wulfram Gerstner : Akademie der Wissenschaften und der Literatur | Mainz". www.adwmainz.de. Retrieved 4 September 2020.

External links

From Wikipedia, the free encyclopedia

Wulfram Gerstner
Wulfram Gerstner in 2018
Born1963 (age 60–61)
CitizenshipGerman
Swiss
AwardsValentino Braitenberg Award for Computational Neuroscience 2018
Academic background
Alma mater University of Tübingen
Ludwig Maximilian University of Munich
Academic work
Discipline Neuroscience
Sub-discipline Computational neuroscience
Institutions École Polytechnique Fédérale de Lausanne (EPFL)
Main interestsDynamic models neural activity

Spike-timing-dependent plasticity (STDP)
Neuronal coding
Hippocampal models

Spatial representation
Website https://www.epfl.ch/labs/lcn/

Wulfram Gerstner (born 1963 in Heilbronn) is a German and Swiss computational neuroscientist. His research focuses on neural spiking patterns in neural networks, and their connection to learning, spatial representation and navigation. [1] Since 2006 Gerstner has been a full professor of Computer Science and Life Sciences at École Polytechnique Fédérale de Lausanne (EPFL), where he also serves as a Director of the Laboratory of Computational Neuroscience. [2]

Career

Gerstner studied physics at the University of Tübingen and at the Ludwig Maximilian University of Munich. In 1989, he received his Master's degree with a thesis in experimental quantum optics. He then joined the theoretical biophysics group of William Bialek at University of California, Berkeley as a visiting researcher. [3] He received his PhD in theoretical physics from the Technical University of Munich in 1993 under supervision from Leo van Hemmen. He did post doctoral work at Brandeis University [4] and at Technical University of Munich, [5] where he worked in theoretical neuroscience.

In 1996 he was nominated as assistant professor and in February 2001 he was promoted as an associate professor with tenure at EPFL. In August 2006 Gerstner was appointed full professor at EPFL in both the School of Computer and Communication Sciences and the School of Life Sciences. [2] [6]

Research

Gerstner's research is focused on models of spiking neurons, [7] [8] spike-timing-dependent plasticity (STDP), [9] neuronal coding in single neurons and neuron populations. [10] He also investigates models of the hippocampus and their application in the spatial representation for navigation of rat-like autonomous agents. [11]

He is also one of the initiators of The Deep Artificial Composer (DAC), a deep-learning algorithm that can generate melodies by imitating a given style of music. [12]

Books

Gerstner is the author of neuroscientific text books such as Spiking Neuron Models: Single neurons, populations, plasticity (Gerstner, W. and Kistler, W.M., 2002, Cambridge University Press) that introduced the field of spiking neural networks, [8] and Neuronal dynamics: From single neurons to networks and models of cognition (Gerstner, W., Kistler, W.M., Naud, R. and Paninski, L., 2014, Cambridge University Press) on the field of computational neuroscience that was also published as an online version including exercises and video lectures. [13]

Selected publications

  • Gerstner, Wulfram (2000). "Population Dynamics of Spiking Neurons: Fast Transients, Asynchronous States, and Locking" (PDF). Neural Computation. 12 (1): 43–89. doi: 10.1162/089976600300015899. PMID  10636933. S2CID  7832768.
  • Clopath, Claudia; Büsing, Lars; Vasilaki, Eleni; Gerstner, Wulfram (2010). "Connectivity reflects coding: A model of voltage-based STDP with homeostasis" (PDF). Nature Neuroscience. 13 (3): 344–352. doi: 10.1038/nn.2479. hdl: 10044/1/21440. PMID  20098420. S2CID  8046538.
  • Gerstner, Wulfram; Kempter, Richard; Van Hemmen, J. Leo; Wagner, Hermann (1996). "A neuronal learning rule for sub-millisecond temporal coding" (PDF). Nature. 383 (6595): 76–78. Bibcode: 1996Natur.383...76G. doi: 10.1038/383076a0. PMID  8779718. S2CID  4319500.
  • Brette, Romain; Gerstner, Wulfram (2005). "Adaptive Exponential Integrate-and-Fire Model as an Effective Description of Neuronal Activity" (PDF). Journal of Neurophysiology. 94 (5): 3637–3642. doi: 10.1152/jn.00686.2005. PMID  16014787.
  • Kempter, Richard; Gerstner, Wulfram; Van Hemmen, J. Leo (1999). "Hebbian learning and spiking neurons" (PDF). Physical Review E. 59 (4): 4498–4514. Bibcode: 1999PhRvE..59.4498K. doi: 10.1103/PhysRevE.59.4498.

Distinctions

Gerstner has been an editorial board member of journals such as Science, [14] The Journal of Neuroscience, Network: Computation in Neural Systems, Journal of Computational Neuroscience, [2] and Neural Computation.

He is the recipient of the Valentino Braitenberg Award for Computational Neuroscience 2018 [15] and in 2010 he was awarded an ERC Advanced Grant by the European Research Council. [16] Gerstner is an elected member of the Academy of Sciences and Literature Mainz. [17]

References

  1. ^ "Sechs neue Mitglieder in der Akademie der Wissenschaften und der Literatur | Mainz". idw-online.de. Retrieved 5 November 2020.
  2. ^ a b c "Wulfram Gerstner". people.epfl.ch. Retrieved 4 September 2020.
  3. ^ GERSTNER, Wulfram (1991). "Associative Memory in a Network of 'Biological' Neurons" (PDF). Advances in Neural Information Processing Systems. 3: 84–90. Archived from the original (PDF) on 6 September 2020.
  4. ^ Gerstner, Wulfram; Abbott, L.F. (1 January 1997). "Learning Navigational Maps Through Potentiation and Modulation of Hippocampal Place Cells". Journal of Computational Neuroscience. 4 (1): 79–94. doi: 10.1023/A:1008820728122. ISSN  1573-6873. PMID  9046453. S2CID  6616177.
  5. ^ GERSTNER, Wulfram (1995). "Time structure of the activity in neural network models". Physical Review E. 51 (1): 738–758. Bibcode: 1995PhRvE..51..738G. doi: 10.1103/PhysRevE.51.738. PMID  9962697.
  6. ^ "Wulfram Gerstner CV". lcnwww.epfl.ch. Retrieved 4 September 2020.
  7. ^ Brette, Romain; Gerstner, Wulfram (1 November 2005). "Adaptive Exponential Integrate-and-Fire Model as an Effective Description of Neuronal Activity" (PDF). Journal of Neurophysiology. 94 (5): 3637–3642. doi: 10.1152/jn.00686.2005. ISSN  0022-3077. PMID  16014787.
  8. ^ a b Gerstner, Wulfram. (2002). Spiking neuron models : single neurons, populations, plasticity. Kistler, Werner M., 1969–. Cambridge, U.K.: Cambridge University Press. ISBN  0-511-07817-X. OCLC  57417395.
  9. ^
  10. ^
  11. ^ Sheynikhovich, Denis; Chavarriaga, Ricardo; Strösslin, Thomas; Arleo, Angelo; Gerstner, Wulfram (1 July 2009). "Is there a geometric module for spatial orientation? Insights from a rodent navigation model" (PDF). Psychological Review. 116 (3): 540–566. doi: 10.1037/a0016170. ISSN  1939-1471. PMID  19618986.
  12. ^
  13. ^
  14. ^ "Science Magazine Masterhead". 12 December 2008. Retrieved 4 September 2020.
  15. ^ "Wulfram Gerstner receives Valentino Braitenberg Award 2018 — Bernstein Netzwerk Computational Neuroscience". www.bernstein-network.de. Retrieved 4 September 2020.
  16. ^ "ERC Advanced Grant 2010" (PDF). 20 January 2010. Retrieved 10 September 2020.
  17. ^ "Prof. Dr. Wulfram Gerstner : Akademie der Wissenschaften und der Literatur | Mainz". www.adwmainz.de. Retrieved 4 September 2020.

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