Literature DB >> 35635432

The geometry of robustness in spiking neural networks.

Nuno Calaim1, Florian A Dehmelt1,2, Pedro J Gonçalves3,4,5, Christian K Machens1.   

Abstract

Neural systems are remarkably robust against various perturbations, a phenomenon that still requires a clear explanation. Here, we graphically illustrate how neural networks can become robust. We study spiking networks that generate low-dimensional representations, and we show that the neurons' subthreshold voltages are confined to a convex region in a lower-dimensional voltage subspace, which we call a 'bounding box'. Any changes in network parameters (such as number of neurons, dimensionality of inputs, firing thresholds, synaptic weights, or transmission delays) can all be understood as deformations of this bounding box. Using these insights, we show that functionality is preserved as long as perturbations do not destroy the integrity of the bounding box. We suggest that the principles underlying robustness in these networks - low-dimensional representations, heterogeneity of tuning, and precise negative feedback - may be key to understanding the robustness of neural systems at the circuit level.
© 2022, Calaim, Dehmelt, Gonçalves et al.

Entities:  

Keywords:  computational biology; neural coding; neuroscience; none; robustness; spiking neural networks; systems biology

Mesh:

Year:  2022        PMID: 35635432      PMCID: PMC9307274          DOI: 10.7554/eLife.73276

Source DB:  PubMed          Journal:  Elife        ISSN: 2050-084X            Impact factor:   8.713


  48 in total

1.  Model for a robust neural integrator.

Authors:  Alexei A Koulakov; Sridhar Raghavachari; Adam Kepecs; John E Lisman
Journal:  Nat Neurosci       Date:  2002-08       Impact factor: 24.884

Review 2.  Pervasive robustness in biological systems.

Authors:  Marie-Anne Félix; Michalis Barkoulas
Journal:  Nat Rev Genet       Date:  2015-08       Impact factor: 53.242

Review 3.  A network dysfunction perspective on neurodegenerative diseases.

Authors:  Jorge J Palop; Jeannie Chin; Lennart Mucke
Journal:  Nature       Date:  2006-10-19       Impact factor: 49.962

4.  Representation of spatial orientation by the intrinsic dynamics of the head-direction cell ensemble: a theory.

Authors:  K Zhang
Journal:  J Neurosci       Date:  1996-03-15       Impact factor: 6.167

5.  Neural networks and physical systems with emergent collective computational abilities.

Authors:  J J Hopfield
Journal:  Proc Natl Acad Sci U S A       Date:  1982-04       Impact factor: 11.205

6.  Optimal compensation for neuron loss.

Authors:  David Gt Barrett; Sophie Denève; Christian K Machens
Journal:  Elife       Date:  2016-12-09       Impact factor: 8.140

7.  Neural oscillations as a signature of efficient coding in the presence of synaptic delays.

Authors:  Matthew Chalk; Boris Gutkin; Sophie Denève
Journal:  Elife       Date:  2016-07-07       Impact factor: 8.140

8.  Learning Universal Computations with Spikes.

Authors:  Dominik Thalmeier; Marvin Uhlmann; Hilbert J Kappen; Raoul-Martin Memmesheimer
Journal:  PLoS Comput Biol       Date:  2016-06-16       Impact factor: 4.475

9.  Sparse representation of sounds in the unanesthetized auditory cortex.

Authors:  Tomás Hromádka; Michael R Deweese; Anthony M Zador
Journal:  PLoS Biol       Date:  2008-01       Impact factor: 8.029

10.  Learning to represent signals spike by spike.

Authors:  Wieland Brendel; Ralph Bourdoukan; Pietro Vertechi; Christian K Machens; Sophie Denève
Journal:  PLoS Comput Biol       Date:  2020-03-16       Impact factor: 4.475

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