---
_id: '14656'
abstract:
- lang: eng
  text: Although much is known about how single neurons in the hippocampus represent
    an animal's position, how circuit interactions contribute to spatial coding is
    less well understood. Using a novel statistical estimator and theoretical modeling,
    both developed in the framework of maximum entropy models, we reveal highly structured
    CA1 cell-cell interactions in male rats during open field exploration. The statistics
    of these interactions depend on whether the animal is in a familiar or novel environment.
    In both conditions the circuit interactions optimize the encoding of spatial information,
    but for regimes that differ in the informativeness of their spatial inputs. This
    structure facilitates linear decodability, making the information easy to read
    out by downstream circuits. Overall, our findings suggest that the efficient coding
    hypothesis is not only applicable to individual neuron properties in the sensory
    periphery, but also to neural interactions in the central brain.
acknowledgement: M.N. was supported by the European Union Horizon 2020 Grant 665385.
  J.C. was supported by the European Research Council Consolidator Grant 281511. G.T.
  was supported by the Austrian Science Fund (FWF) Grant P34015. C.S. was supported
  by an Institute of Science and Technology fellow award and by the National Science
  Foundation (NSF) Award No. 1922658. We thank Peter Baracskay, Karola Kaefer, and
  Hugo Malagon-Vina for the acquisition of the data. We also thank Federico Stella,
  Wiktor Młynarski, Dori Derdikman, Colin Bredenberg, Roman Huszar, Heloisa Chiossi,
  Lorenzo Posani, and Mohamady El-Gaby for comments on an earlier version of the manuscript.
article_processing_charge: Yes (in subscription journal)
article_type: original
author:
- first_name: Michele
  full_name: Nardin, Michele
  id: 30BD0376-F248-11E8-B48F-1D18A9856A87
  last_name: Nardin
  orcid: 0000-0001-8849-6570
- first_name: Jozsef L
  full_name: Csicsvari, Jozsef L
  id: 3FA14672-F248-11E8-B48F-1D18A9856A87
  last_name: Csicsvari
  orcid: 0000-0002-5193-4036
- first_name: Gašper
  full_name: Tkačik, Gašper
  id: 3D494DCA-F248-11E8-B48F-1D18A9856A87
  last_name: Tkačik
  orcid: 0000-0002-6699-1455
- first_name: Cristina
  full_name: Savin, Cristina
  id: 3933349E-F248-11E8-B48F-1D18A9856A87
  last_name: Savin
citation:
  ama: Nardin M, Csicsvari JL, Tkačik G, Savin C. The structure of hippocampal CA1
    interactions optimizes spatial coding across experience. <i>The Journal of Neuroscience</i>.
    2023;43(48):8140-8156. doi:<a href="https://doi.org/10.1523/JNEUROSCI.0194-23.2023">10.1523/JNEUROSCI.0194-23.2023</a>
  apa: Nardin, M., Csicsvari, J. L., Tkačik, G., &#38; Savin, C. (2023). The structure
    of hippocampal CA1 interactions optimizes spatial coding across experience. <i>The
    Journal of Neuroscience</i>. Society of Neuroscience. <a href="https://doi.org/10.1523/JNEUROSCI.0194-23.2023">https://doi.org/10.1523/JNEUROSCI.0194-23.2023</a>
  chicago: Nardin, Michele, Jozsef L Csicsvari, Gašper Tkačik, and Cristina Savin.
    “The Structure of Hippocampal CA1 Interactions Optimizes Spatial Coding across
    Experience.” <i>The Journal of Neuroscience</i>. Society of Neuroscience, 2023.
    <a href="https://doi.org/10.1523/JNEUROSCI.0194-23.2023">https://doi.org/10.1523/JNEUROSCI.0194-23.2023</a>.
  ieee: M. Nardin, J. L. Csicsvari, G. Tkačik, and C. Savin, “The structure of hippocampal
    CA1 interactions optimizes spatial coding across experience,” <i>The Journal of
    Neuroscience</i>, vol. 43, no. 48. Society of Neuroscience, pp. 8140–8156, 2023.
  ista: Nardin M, Csicsvari JL, Tkačik G, Savin C. 2023. The structure of hippocampal
    CA1 interactions optimizes spatial coding across experience. The Journal of Neuroscience.
    43(48), 8140–8156.
  mla: Nardin, Michele, et al. “The Structure of Hippocampal CA1 Interactions Optimizes
    Spatial Coding across Experience.” <i>The Journal of Neuroscience</i>, vol. 43,
    no. 48, Society of Neuroscience, 2023, pp. 8140–56, doi:<a href="https://doi.org/10.1523/JNEUROSCI.0194-23.2023">10.1523/JNEUROSCI.0194-23.2023</a>.
  short: M. Nardin, J.L. Csicsvari, G. Tkačik, C. Savin, The Journal of Neuroscience
    43 (2023) 8140–8156.
date_created: 2023-12-10T23:00:58Z
date_published: 2023-11-29T00:00:00Z
date_updated: 2023-12-11T11:37:20Z
day: '29'
ddc:
- '570'
department:
- _id: JoCs
- _id: GaTk
doi: 10.1523/JNEUROSCI.0194-23.2023
ec_funded: 1
external_id:
  pmid:
  - '37758476'
file:
- access_level: closed
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  date_updated: 2023-12-11T11:30:37Z
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  file_name: 2023_JourNeuroscience_Nardin.pdf
  file_size: 2280632
  relation: main_file
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has_accepted_license: '1'
intvolume: '        43'
issue: '48'
language:
- iso: eng
main_file_link:
- open_access: '1'
  url: https://doi.org/10.1523/JNEUROSCI.0194-23.2023
month: '11'
oa: 1
oa_version: Published Version
page: 8140-8156
pmid: 1
project:
- _id: 257A4776-B435-11E9-9278-68D0E5697425
  call_identifier: FP7
  grant_number: '281511'
  name: Memory-related information processing in neuronal circuits of the hippocampus
    and entorhinal cortex
- _id: 626c45b5-2b32-11ec-9570-e509828c1ba6
  grant_number: P34015
  name: Efficient coding with biophysical realism
- _id: 2564DBCA-B435-11E9-9278-68D0E5697425
  call_identifier: H2020
  grant_number: '665385'
  name: International IST Doctoral Program
publication: The Journal of Neuroscience
publication_identifier:
  eissn:
  - 1529-2401
publication_status: published
publisher: Society of Neuroscience
quality_controlled: '1'
scopus_import: '1'
status: public
title: The structure of hippocampal CA1 interactions optimizes spatial coding across
  experience
tmp:
  image: /images/cc_by.png
  legal_code_url: https://creativecommons.org/licenses/by/4.0/legalcode
  name: Creative Commons Attribution 4.0 International Public License (CC-BY 4.0)
  short: CC BY (4.0)
type: journal_article
user_id: 2DF688A6-F248-11E8-B48F-1D18A9856A87
volume: 43
year: '2023'
...
---
_id: '10077'
abstract:
- lang: eng
  text: Although much is known about how single neurons in the hippocampus represent
    an animal’s position, how cell-cell interactions contribute to spatial coding
    remains poorly understood. Using a novel statistical estimator and theoretical
    modeling, both developed in the framework of maximum entropy models, we reveal
    highly structured cell-to-cell interactions whose statistics depend on familiar
    vs. novel environment. In both conditions the circuit interactions optimize the
    encoding of spatial information, but for regimes that differ in the signal-to-noise
    ratio of their spatial inputs. Moreover, the topology of the interactions facilitates
    linear decodability, making the information easy to read out by downstream circuits.
    These findings suggest that the efficient coding hypothesis is not applicable
    only to individual neuron properties in the sensory periphery, but also to neural
    interactions in the central brain.
acknowledgement: We thank Peter Baracskay, Karola Kaefer and Hugo Malagon-Vina for
  the acquisition of the data. We thank Federico Stella for comments on an earlier
  version of the manuscript. MN was supported by European Union Horizon 2020 grant
  665385, JC was supported by European Research Council consolidator grant 281511,
  GT was supported by the Austrian Science Fund (FWF) grant P34015, CS was supported
  by an IST fellow grant, National Institute of Mental Health Award 1R01MH125571-01,
  by the National Science Foundation under NSF Award No. 1922658 and a Google faculty
  award.
article_processing_charge: No
author:
- first_name: Michele
  full_name: Nardin, Michele
  id: 30BD0376-F248-11E8-B48F-1D18A9856A87
  last_name: Nardin
  orcid: 0000-0001-8849-6570
- first_name: Jozsef L
  full_name: Csicsvari, Jozsef L
  id: 3FA14672-F248-11E8-B48F-1D18A9856A87
  last_name: Csicsvari
  orcid: 0000-0002-5193-4036
- first_name: Gašper
  full_name: Tkačik, Gašper
  id: 3D494DCA-F248-11E8-B48F-1D18A9856A87
  last_name: Tkačik
  orcid: 0000-0002-6699-1455
- first_name: Cristina
  full_name: Savin, Cristina
  id: 3933349E-F248-11E8-B48F-1D18A9856A87
  last_name: Savin
citation:
  ama: Nardin M, Csicsvari JL, Tkačik G, Savin C. The structure of hippocampal CA1
    interactions optimizes spatial coding across experience. <i>bioRxiv</i>. doi:<a
    href="https://doi.org/10.1101/2021.09.28.460602">10.1101/2021.09.28.460602</a>
  apa: Nardin, M., Csicsvari, J. L., Tkačik, G., &#38; Savin, C. (n.d.). The structure
    of hippocampal CA1 interactions optimizes spatial coding across experience. <i>bioRxiv</i>.
    Cold Spring Harbor Laboratory. <a href="https://doi.org/10.1101/2021.09.28.460602">https://doi.org/10.1101/2021.09.28.460602</a>
  chicago: Nardin, Michele, Jozsef L Csicsvari, Gašper Tkačik, and Cristina Savin.
    “The Structure of Hippocampal CA1 Interactions Optimizes Spatial Coding across
    Experience.” <i>BioRxiv</i>. Cold Spring Harbor Laboratory, n.d. <a href="https://doi.org/10.1101/2021.09.28.460602">https://doi.org/10.1101/2021.09.28.460602</a>.
  ieee: M. Nardin, J. L. Csicsvari, G. Tkačik, and C. Savin, “The structure of hippocampal
    CA1 interactions optimizes spatial coding across experience,” <i>bioRxiv</i>.
    Cold Spring Harbor Laboratory.
  ista: Nardin M, Csicsvari JL, Tkačik G, Savin C. The structure of hippocampal CA1
    interactions optimizes spatial coding across experience. bioRxiv, <a href="https://doi.org/10.1101/2021.09.28.460602">10.1101/2021.09.28.460602</a>.
  mla: Nardin, Michele, et al. “The Structure of Hippocampal CA1 Interactions Optimizes
    Spatial Coding across Experience.” <i>BioRxiv</i>, Cold Spring Harbor Laboratory,
    doi:<a href="https://doi.org/10.1101/2021.09.28.460602">10.1101/2021.09.28.460602</a>.
  short: M. Nardin, J.L. Csicsvari, G. Tkačik, C. Savin, BioRxiv (n.d.).
date_created: 2021-10-04T06:23:34Z
date_published: 2021-09-29T00:00:00Z
date_updated: 2024-03-25T23:30:09Z
day: '29'
department:
- _id: GradSch
- _id: JoCs
- _id: GaTk
doi: 10.1101/2021.09.28.460602
ec_funded: 1
language:
- iso: eng
main_file_link:
- open_access: '1'
  url: https://www.biorxiv.org/content/10.1101/2021.09.28.460602
month: '09'
oa: 1
oa_version: Preprint
project:
- _id: 25681D80-B435-11E9-9278-68D0E5697425
  call_identifier: FP7
  grant_number: '291734'
  name: International IST Postdoc Fellowship Programme
- _id: 2564DBCA-B435-11E9-9278-68D0E5697425
  call_identifier: H2020
  grant_number: '665385'
  name: International IST Doctoral Program
- _id: 257A4776-B435-11E9-9278-68D0E5697425
  call_identifier: FP7
  grant_number: '281511'
  name: Memory-related information processing in neuronal circuits of the hippocampus
    and entorhinal cortex
- _id: 626c45b5-2b32-11ec-9570-e509828c1ba6
  grant_number: P34015
  name: Efficient coding with biophysical realism
publication: bioRxiv
publication_status: submitted
publisher: Cold Spring Harbor Laboratory
related_material:
  record:
  - id: '11932'
    relation: dissertation_contains
    status: public
status: public
title: The structure of hippocampal CA1 interactions optimizes spatial coding across
  experience
tmp:
  image: /images/cc_by_nc_nd.png
  legal_code_url: https://creativecommons.org/licenses/by-nc-nd/4.0/legalcode
  name: Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International
    (CC BY-NC-ND 4.0)
  short: CC BY-NC-ND (4.0)
type: preprint
user_id: 8b945eb4-e2f2-11eb-945a-df72226e66a9
year: '2021'
...
---
_id: '730'
abstract:
- lang: eng
  text: Neural responses are highly structured, with population activity restricted
    to a small subset of the astronomical range of possible activity patterns. Characterizing
    these statistical regularities is important for understanding circuit computation,
    but challenging in practice. Here we review recent approaches based on the maximum
    entropy principle used for quantifying collective behavior in neural activity.
    We highlight recent models that capture population-level statistics of neural
    data, yielding insights into the organization of the neural code and its biological
    substrate. Furthermore, the MaxEnt framework provides a general recipe for constructing
    surrogate ensembles that preserve aspects of the data, but are otherwise maximally
    unstructured. This idea can be used to generate a hierarchy of controls against
    which rigorous statistical tests are possible.
article_processing_charge: No
author:
- first_name: Cristina
  full_name: Savin, Cristina
  id: 3933349E-F248-11E8-B48F-1D18A9856A87
  last_name: Savin
- first_name: Gasper
  full_name: Tkacik, Gasper
  id: 3D494DCA-F248-11E8-B48F-1D18A9856A87
  last_name: Tkacik
  orcid: 0000-0002-6699-1455
citation:
  ama: Savin C, Tkačik G. Maximum entropy models as a tool for building precise neural
    controls. <i>Current Opinion in Neurobiology</i>. 2017;46:120-126. doi:<a href="https://doi.org/10.1016/j.conb.2017.08.001">10.1016/j.conb.2017.08.001</a>
  apa: Savin, C., &#38; Tkačik, G. (2017). Maximum entropy models as a tool for building
    precise neural controls. <i>Current Opinion in Neurobiology</i>. Elsevier. <a
    href="https://doi.org/10.1016/j.conb.2017.08.001">https://doi.org/10.1016/j.conb.2017.08.001</a>
  chicago: Savin, Cristina, and Gašper Tkačik. “Maximum Entropy Models as a Tool for
    Building Precise Neural Controls.” <i>Current Opinion in Neurobiology</i>. Elsevier,
    2017. <a href="https://doi.org/10.1016/j.conb.2017.08.001">https://doi.org/10.1016/j.conb.2017.08.001</a>.
  ieee: C. Savin and G. Tkačik, “Maximum entropy models as a tool for building precise
    neural controls,” <i>Current Opinion in Neurobiology</i>, vol. 46. Elsevier, pp.
    120–126, 2017.
  ista: Savin C, Tkačik G. 2017. Maximum entropy models as a tool for building precise
    neural controls. Current Opinion in Neurobiology. 46, 120–126.
  mla: Savin, Cristina, and Gašper Tkačik. “Maximum Entropy Models as a Tool for Building
    Precise Neural Controls.” <i>Current Opinion in Neurobiology</i>, vol. 46, Elsevier,
    2017, pp. 120–26, doi:<a href="https://doi.org/10.1016/j.conb.2017.08.001">10.1016/j.conb.2017.08.001</a>.
  short: C. Savin, G. Tkačik, Current Opinion in Neurobiology 46 (2017) 120–126.
date_created: 2018-12-11T11:48:11Z
date_published: 2017-10-01T00:00:00Z
date_updated: 2023-09-28T11:32:22Z
day: '01'
department:
- _id: GaTk
doi: 10.1016/j.conb.2017.08.001
ec_funded: 1
external_id:
  isi:
  - '000416196400016'
intvolume: '        46'
isi: 1
language:
- iso: eng
month: '10'
oa_version: None
page: 120 - 126
project:
- _id: 25681D80-B435-11E9-9278-68D0E5697425
  call_identifier: FP7
  grant_number: '291734'
  name: International IST Postdoc Fellowship Programme
publication: Current Opinion in Neurobiology
publication_identifier:
  issn:
  - '09594388'
publication_status: published
publisher: Elsevier
publist_id: '6943'
quality_controlled: '1'
scopus_import: '1'
status: public
title: Maximum entropy models as a tool for building precise neural controls
type: journal_article
user_id: c635000d-4b10-11ee-a964-aac5a93f6ac1
volume: 46
year: '2017'
...
---
_id: '1105'
abstract:
- lang: eng
  text: Jointly characterizing neural responses in terms of several external variables
    promises novel insights into circuit function, but remains computationally prohibitive
    in practice. Here we use gaussian process (GP) priors and exploit recent advances
    in fast GP inference and learning based on Kronecker methods, to efficiently estimate
    multidimensional nonlinear tuning functions. Our estimator require considerably
    less data than traditional methods and further provides principled uncertainty
    estimates. We apply these tools to hippocampal recordings during open field exploration
    and use them to characterize the joint dependence of CA1 responses on the position
    of the animal and several other variables, including the animal\'s speed, direction
    of motion, and network oscillations.Our results provide an unprecedentedly detailed
    quantification of the tuning of hippocampal neurons. The model\'s generality suggests
    that our approach can be used to estimate neural response properties in other
    brain regions.
acknowledgement: "We  thank  Jozsef  Csicsvari  for  kindly  sharing  the  CA1  data.\r\nThis
  work was supported by the People Programme (Marie Curie Actions) of the European
  Union’s Seventh Framework Programme(FP7/2007-2013) under REA grant agreement no.
  291734."
alternative_title:
- Advances in Neural Information Processing Systems
author:
- first_name: Cristina
  full_name: Savin, Cristina
  id: 3933349E-F248-11E8-B48F-1D18A9856A87
  last_name: Savin
- first_name: Gasper
  full_name: Tkacik, Gasper
  id: 3D494DCA-F248-11E8-B48F-1D18A9856A87
  last_name: Tkacik
  orcid: 0000-0002-6699-1455
citation:
  ama: 'Savin C, Tkačik G. Estimating nonlinear neural response functions using GP
    priors and Kronecker methods. In: Vol 29. Neural Information Processing Systems;
    2016:3610-3618.'
  apa: 'Savin, C., &#38; Tkačik, G. (2016). Estimating nonlinear neural response functions
    using GP priors and Kronecker methods (Vol. 29, pp. 3610–3618). Presented at the
    NIPS: Neural Information Processing Systems, Barcelona; Spain: Neural Information
    Processing Systems.'
  chicago: Savin, Cristina, and Gašper Tkačik. “Estimating Nonlinear Neural Response
    Functions Using GP Priors and Kronecker Methods,” 29:3610–18. Neural Information
    Processing Systems, 2016.
  ieee: 'C. Savin and G. Tkačik, “Estimating nonlinear neural response functions using
    GP priors and Kronecker methods,” presented at the NIPS: Neural Information Processing
    Systems, Barcelona; Spain, 2016, vol. 29, pp. 3610–3618.'
  ista: 'Savin C, Tkačik G. 2016. Estimating nonlinear neural response functions using
    GP priors and Kronecker methods. NIPS: Neural Information Processing Systems,
    Advances in Neural Information Processing Systems, vol. 29, 3610–3618.'
  mla: Savin, Cristina, and Gašper Tkačik. <i>Estimating Nonlinear Neural Response
    Functions Using GP Priors and Kronecker Methods</i>. Vol. 29, Neural Information
    Processing Systems, 2016, pp. 3610–18.
  short: C. Savin, G. Tkačik, in:, Neural Information Processing Systems, 2016, pp.
    3610–3618.
conference:
  end_date: 2016-12-10
  location: Barcelona; Spain
  name: 'NIPS: Neural Information Processing Systems'
  start_date: 2016-12-05
date_created: 2018-12-11T11:50:10Z
date_published: 2016-12-01T00:00:00Z
date_updated: 2021-01-12T06:48:19Z
day: '01'
department:
- _id: GaTk
ec_funded: 1
intvolume: '        29'
language:
- iso: eng
main_file_link:
- url: http://papers.nips.cc/paper/6153-estimating-nonlinear-neural-response-functions-using-gp-priors-and-kronecker-methods
month: '12'
oa_version: None
page: 3610-3618
project:
- _id: 25681D80-B435-11E9-9278-68D0E5697425
  call_identifier: FP7
  grant_number: '291734'
  name: International IST Postdoc Fellowship Programme
publication_status: published
publisher: Neural Information Processing Systems
publist_id: '6265'
quality_controlled: '1'
scopus_import: 1
status: public
title: Estimating nonlinear neural response functions using GP priors and Kronecker
  methods
type: conference
user_id: 3E5EF7F0-F248-11E8-B48F-1D18A9856A87
volume: 29
year: '2016'
...
---
_id: '948'
abstract:
- lang: eng
  text: Experience constantly shapes neural circuits through a variety of plasticity
    mechanisms. While the functional roles of some plasticity mechanisms are well-understood,
    it remains unclear how changes in neural excitability contribute to learning.
    Here, we develop a normative interpretation of intrinsic plasticity (IP) as a
    key component of unsupervised learning. We introduce a novel generative mixture
    model that accounts for the class-specific statistics of stimulus intensities,
    and we derive a neural circuit that learns the input classes and their intensities.
    We will analytically show that inference and learning for our generative model
    can be achieved by a neural circuit with intensity-sensitive neurons equipped
    with a specific form of IP. Numerical experiments verify our analytical derivations
    and show robust behavior for artificial and natural stimuli. Our results link
    IP to non-trivial input statistics, in particular the statistics of stimulus intensities
    for classes to which a neuron is sensitive. More generally, our work paves the
    way toward new classification algorithms that are robust to intensity variations.
acknowledgement: DFG Cluster of Excellence EXC 1077/1 (Hearing4all) and  LU 1196/5-1
  (JL and TM), People Programme (Marie Curie Actions) FP7/2007-2013 grant agreement
  no. 291734 (CS)
alternative_title:
- Advances in Neural Information Processing Systems
author:
- first_name: Travis
  full_name: Monk, Travis
  last_name: Monk
- first_name: Cristina
  full_name: Savin, Cristina
  id: 3933349E-F248-11E8-B48F-1D18A9856A87
  last_name: Savin
- first_name: Jörg
  full_name: Lücke, Jörg
  last_name: Lücke
citation:
  ama: 'Monk T, Savin C, Lücke J. Neurons equipped with intrinsic plasticity learn
    stimulus intensity statistics. In: Vol 29. Neural Information Processing Systems;
    2016:4285-4293.'
  apa: 'Monk, T., Savin, C., &#38; Lücke, J. (2016). Neurons equipped with intrinsic
    plasticity learn stimulus intensity statistics (Vol. 29, pp. 4285–4293). Presented
    at the NIPS: Neural Information Processing Systems, Barcelona, Spaine: Neural
    Information Processing Systems.'
  chicago: Monk, Travis, Cristina Savin, and Jörg Lücke. “Neurons Equipped with Intrinsic
    Plasticity Learn Stimulus Intensity Statistics,” 29:4285–93. Neural Information
    Processing Systems, 2016.
  ieee: 'T. Monk, C. Savin, and J. Lücke, “Neurons equipped with intrinsic plasticity
    learn stimulus intensity statistics,” presented at the NIPS: Neural Information
    Processing Systems, Barcelona, Spaine, 2016, vol. 29, pp. 4285–4293.'
  ista: 'Monk T, Savin C, Lücke J. 2016. Neurons equipped with intrinsic plasticity
    learn stimulus intensity statistics. NIPS: Neural Information Processing Systems,
    Advances in Neural Information Processing Systems, vol. 29, 4285–4293.'
  mla: Monk, Travis, et al. <i>Neurons Equipped with Intrinsic Plasticity Learn Stimulus
    Intensity Statistics</i>. Vol. 29, Neural Information Processing Systems, 2016,
    pp. 4285–93.
  short: T. Monk, C. Savin, J. Lücke, in:, Neural Information Processing Systems,
    2016, pp. 4285–4293.
conference:
  end_date: 2016-12-10
  location: Barcelona, Spaine
  name: 'NIPS: Neural Information Processing Systems'
  start_date: 2016-12-05
date_created: 2018-12-11T11:49:21Z
date_published: 2016-01-01T00:00:00Z
date_updated: 2021-01-12T08:22:08Z
day: '01'
department:
- _id: GaTk
ec_funded: 1
intvolume: '        29'
language:
- iso: eng
main_file_link:
- url: https://papers.nips.cc/paper/6582-neurons-equipped-with-intrinsic-plasticity-learn-stimulus-intensity-statistics
month: '01'
oa_version: None
page: 4285 - 4293
project:
- _id: 25681D80-B435-11E9-9278-68D0E5697425
  call_identifier: FP7
  grant_number: '291734'
  name: International IST Postdoc Fellowship Programme
publication_status: published
publisher: Neural Information Processing Systems
publist_id: '6469'
quality_controlled: '1'
scopus_import: 1
status: public
title: Neurons equipped with intrinsic plasticity learn stimulus intensity statistics
type: conference
user_id: 3E5EF7F0-F248-11E8-B48F-1D18A9856A87
volume: 29
year: '2016'
...
---
_id: '1564'
article_number: '145'
author:
- first_name: Matthieu
  full_name: Gilson, Matthieu
  last_name: Gilson
- first_name: Cristina
  full_name: Savin, Cristina
  id: 3933349E-F248-11E8-B48F-1D18A9856A87
  last_name: Savin
- first_name: Friedemann
  full_name: Zenke, Friedemann
  last_name: Zenke
citation:
  ama: 'Gilson M, Savin C, Zenke F. Editorial: Emergent neural computation from the
    interaction of different forms of plasticity. <i>Frontiers in Computational Neuroscience</i>.
    2015;9(11). doi:<a href="https://doi.org/10.3389/fncom.2015.00145">10.3389/fncom.2015.00145</a>'
  apa: 'Gilson, M., Savin, C., &#38; Zenke, F. (2015). Editorial: Emergent neural
    computation from the interaction of different forms of plasticity. <i>Frontiers
    in Computational Neuroscience</i>. Frontiers Research Foundation. <a href="https://doi.org/10.3389/fncom.2015.00145">https://doi.org/10.3389/fncom.2015.00145</a>'
  chicago: 'Gilson, Matthieu, Cristina Savin, and Friedemann Zenke. “Editorial: Emergent
    Neural Computation from the Interaction of Different Forms of Plasticity.” <i>Frontiers
    in Computational Neuroscience</i>. Frontiers Research Foundation, 2015. <a href="https://doi.org/10.3389/fncom.2015.00145">https://doi.org/10.3389/fncom.2015.00145</a>.'
  ieee: 'M. Gilson, C. Savin, and F. Zenke, “Editorial: Emergent neural computation
    from the interaction of different forms of plasticity,” <i>Frontiers in Computational
    Neuroscience</i>, vol. 9, no. 11. Frontiers Research Foundation, 2015.'
  ista: 'Gilson M, Savin C, Zenke F. 2015. Editorial: Emergent neural computation
    from the interaction of different forms of plasticity. Frontiers in Computational
    Neuroscience. 9(11), 145.'
  mla: 'Gilson, Matthieu, et al. “Editorial: Emergent Neural Computation from the
    Interaction of Different Forms of Plasticity.” <i>Frontiers in Computational Neuroscience</i>,
    vol. 9, no. 11, 145, Frontiers Research Foundation, 2015, doi:<a href="https://doi.org/10.3389/fncom.2015.00145">10.3389/fncom.2015.00145</a>.'
  short: M. Gilson, C. Savin, F. Zenke, Frontiers in Computational Neuroscience 9
    (2015).
date_created: 2018-12-11T11:52:45Z
date_published: 2015-11-30T00:00:00Z
date_updated: 2021-01-12T06:51:37Z
day: '30'
ddc:
- '570'
department:
- _id: GaTk
doi: 10.3389/fncom.2015.00145
ec_funded: 1
file:
- access_level: open_access
  checksum: cea73b6d3ef1579f32da10b82f4de4fd
  content_type: application/pdf
  creator: system
  date_created: 2018-12-12T10:12:09Z
  date_updated: 2020-07-14T12:45:02Z
  file_id: '4927'
  file_name: IST-2016-479-v1+1_fncom-09-00145.pdf
  file_size: 187038
  relation: main_file
file_date_updated: 2020-07-14T12:45:02Z
has_accepted_license: '1'
intvolume: '         9'
issue: '11'
language:
- iso: eng
month: '11'
oa: 1
oa_version: Published Version
project:
- _id: 25681D80-B435-11E9-9278-68D0E5697425
  call_identifier: FP7
  grant_number: '291734'
  name: International IST Postdoc Fellowship Programme
publication: Frontiers in Computational Neuroscience
publication_status: published
publisher: Frontiers Research Foundation
publist_id: '5607'
pubrep_id: '479'
quality_controlled: '1'
scopus_import: 1
status: public
title: 'Editorial: Emergent neural computation from the interaction of different forms
  of plasticity'
tmp:
  image: /images/cc_by.png
  legal_code_url: https://creativecommons.org/licenses/by/4.0/legalcode
  name: Creative Commons Attribution 4.0 International Public License (CC-BY 4.0)
  short: CC BY (4.0)
type: journal_article
user_id: 2DF688A6-F248-11E8-B48F-1D18A9856A87
volume: 9
year: '2015'
...
---
_id: '1708'
abstract:
- lang: eng
  text: It has been long argued that, because of inherent ambiguity and noise, the
    brain needs to represent uncertainty in the form of probability distributions.
    The neural encoding of such distributions remains however highly controversial.
    Here we present a novel circuit model for representing multidimensional real-valued
    distributions using a spike based spatio-temporal code. Our model combines the
    computational advantages of the currently competing models for probabilistic codes
    and exhibits realistic neural responses along a variety of classic measures. Furthermore,
    the model highlights the challenges associated with interpreting neural activity
    in relation to behavioral uncertainty and points to alternative population-level
    approaches for the experimental validation of distributed representations.
author:
- first_name: Cristina
  full_name: Savin, Cristina
  id: 3933349E-F248-11E8-B48F-1D18A9856A87
  last_name: Savin
- first_name: Sophie
  full_name: Denève, Sophie
  last_name: Denève
citation:
  ama: 'Savin C, Denève S. Spatio-temporal representations of uncertainty in spiking
    neural networks. In: Vol 3. Neural Information Processing Systems; 2014:2024-2032.'
  apa: 'Savin, C., &#38; Denève, S. (2014). Spatio-temporal representations of uncertainty
    in spiking neural networks (Vol. 3, pp. 2024–2032). Presented at the NIPS: Neural
    Information Processing Systems, Montreal, Canada: Neural Information Processing
    Systems.'
  chicago: Savin, Cristina, and Sophie Denève. “Spatio-Temporal Representations of
    Uncertainty in Spiking Neural Networks,” 3:2024–32. Neural Information Processing
    Systems, 2014.
  ieee: 'C. Savin and S. Denève, “Spatio-temporal representations of uncertainty in
    spiking neural networks,” presented at the NIPS: Neural Information Processing
    Systems, Montreal, Canada, 2014, vol. 3, no. January, pp. 2024–2032.'
  ista: 'Savin C, Denève S. 2014. Spatio-temporal representations of uncertainty in
    spiking neural networks. NIPS: Neural Information Processing Systems vol. 3, 2024–2032.'
  mla: Savin, Cristina, and Sophie Denève. <i>Spatio-Temporal Representations of Uncertainty
    in Spiking Neural Networks</i>. Vol. 3, no. January, Neural Information Processing
    Systems, 2014, pp. 2024–32.
  short: C. Savin, S. Denève, in:, Neural Information Processing Systems, 2014, pp.
    2024–2032.
conference:
  end_date: 2014-12-13
  location: Montreal, Canada
  name: 'NIPS: Neural Information Processing Systems'
  start_date: 2014-12-08
date_created: 2018-12-11T11:53:35Z
date_published: 2014-01-01T00:00:00Z
date_updated: 2021-01-12T06:52:40Z
day: '01'
department:
- _id: GaTk
intvolume: '         3'
issue: January
language:
- iso: eng
main_file_link:
- url: http://papers.nips.cc/paper/5343-spatio-temporal-representations-of-uncertainty-in-spiking-neural-networks.pdf
month: '01'
oa_version: None
page: 2024 - 2032
publication_status: published
publisher: Neural Information Processing Systems
publist_id: '5427'
quality_controlled: '1'
scopus_import: 1
status: public
title: Spatio-temporal representations of uncertainty in spiking neural networks
type: conference
user_id: 4435EBFC-F248-11E8-B48F-1D18A9856A87
volume: 3
year: '2014'
...
---
_id: '1931'
abstract:
- lang: eng
  text: A wealth of experimental evidence suggests that working memory circuits preferentially
    represent information that is behaviorally relevant. Still, we are missing a mechanistic
    account of how these representations come about. Here we provide a simple explanation
    for a range of experimental findings, in light of prefrontal circuits adapting
    to task constraints by reward-dependent learning. In particular, we model a neural
    network shaped by reward-modulated spike-timing dependent plasticity (r-STDP)
    and homeostatic plasticity (intrinsic excitability and synaptic scaling). We show
    that the experimentally-observed neural representations naturally emerge in an
    initially unstructured circuit as it learns to solve several working memory tasks.
    These results point to a critical, and previously unappreciated, role for reward-dependent
    learning in shaping prefrontal cortex activity.
acknowledgement: Supported in part by EC MEXT project PLICON and the LOEWE-Program
  “Neuronal Coordination Research Focus Frankfurt” (NeFF). Jochen Triesch was supported
  by the Quandt foundation.
article_number: '57'
author:
- first_name: Cristina
  full_name: Savin, Cristina
  id: 3933349E-F248-11E8-B48F-1D18A9856A87
  last_name: Savin
- first_name: Jochen
  full_name: Triesch, Jochen
  last_name: Triesch
citation:
  ama: Savin C, Triesch J. Emergence of task-dependent representations in working
    memory circuits. <i>Frontiers in Computational Neuroscience</i>. 2014;8(MAY).
    doi:<a href="https://doi.org/10.3389/fncom.2014.00057">10.3389/fncom.2014.00057</a>
  apa: Savin, C., &#38; Triesch, J. (2014). Emergence of task-dependent representations
    in working memory circuits. <i>Frontiers in Computational Neuroscience</i>. Frontiers
    Research Foundation. <a href="https://doi.org/10.3389/fncom.2014.00057">https://doi.org/10.3389/fncom.2014.00057</a>
  chicago: Savin, Cristina, and Jochen Triesch. “Emergence of Task-Dependent Representations
    in Working Memory Circuits.” <i>Frontiers in Computational Neuroscience</i>. Frontiers
    Research Foundation, 2014. <a href="https://doi.org/10.3389/fncom.2014.00057">https://doi.org/10.3389/fncom.2014.00057</a>.
  ieee: C. Savin and J. Triesch, “Emergence of task-dependent representations in working
    memory circuits,” <i>Frontiers in Computational Neuroscience</i>, vol. 8, no.
    MAY. Frontiers Research Foundation, 2014.
  ista: Savin C, Triesch J. 2014. Emergence of task-dependent representations in working
    memory circuits. Frontiers in Computational Neuroscience. 8(MAY), 57.
  mla: Savin, Cristina, and Jochen Triesch. “Emergence of Task-Dependent Representations
    in Working Memory Circuits.” <i>Frontiers in Computational Neuroscience</i>, vol.
    8, no. MAY, 57, Frontiers Research Foundation, 2014, doi:<a href="https://doi.org/10.3389/fncom.2014.00057">10.3389/fncom.2014.00057</a>.
  short: C. Savin, J. Triesch, Frontiers in Computational Neuroscience 8 (2014).
date_created: 2018-12-11T11:54:46Z
date_published: 2014-05-28T00:00:00Z
date_updated: 2021-01-12T06:54:09Z
day: '28'
department:
- _id: GaTk
doi: 10.3389/fncom.2014.00057
intvolume: '         8'
issue: MAY
language:
- iso: eng
main_file_link:
- open_access: '1'
  url: http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4035833/
month: '05'
oa: 1
oa_version: Submitted Version
publication: Frontiers in Computational Neuroscience
publication_status: published
publisher: Frontiers Research Foundation
publist_id: '5163'
quality_controlled: '1'
scopus_import: 1
status: public
title: Emergence of task-dependent representations in working memory circuits
type: journal_article
user_id: 4435EBFC-F248-11E8-B48F-1D18A9856A87
volume: 8
year: '2014'
...
