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Bayesian reconstruction of memories stored in neural networks from their connectivity

Publication ,  Journal Article
Goldt, S; Krzakala, F; Zdeborová, L; Brunel, N
Published in: PLOS Computational Biology 19(1): e1010813 2023
May 16, 2021

The advent of comprehensive synaptic wiring diagrams of large neural circuits has created the field of connectomics and given rise to a number of open research questions. One such question is whether it is possible to reconstruct the information stored in a recurrent network of neurons, given its synaptic connectivity matrix. Here, we address this question by determining when solving such an inference problem is theoretically possible in specific attractor network models and by providing a practical algorithm to do so. The algorithm builds on ideas from statistical physics to perform approximate Bayesian inference and is amenable to exact analysis. We study its performance on three different models, compare the algorithm to standard algorithms such as PCA, and explore the limitations of reconstructing stored patterns from synaptic connectivity.

Duke Scholars

Published In

PLOS Computational Biology 19(1): e1010813 2023

Publication Date

May 16, 2021
 

Citation

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Goldt, S., Krzakala, F., Zdeborová, L., & Brunel, N. (2021). Bayesian reconstruction of memories stored in neural networks from their connectivity. PLOS Computational Biology 19(1): E1010813 2023.
Goldt, Sebastian, Florent Krzakala, Lenka Zdeborová, and Nicolas Brunel. “Bayesian reconstruction of memories stored in neural networks from their connectivity.” PLOS Computational Biology 19(1): E1010813 2023, May 16, 2021.
Goldt S, Krzakala F, Zdeborová L, Brunel N. Bayesian reconstruction of memories stored in neural networks from their connectivity. PLOS Computational Biology 19(1): e1010813 2023. 2021 May 16;
Goldt, Sebastian, et al. “Bayesian reconstruction of memories stored in neural networks from their connectivity.” PLOS Computational Biology 19(1): E1010813 2023, May 2021.
Goldt S, Krzakala F, Zdeborová L, Brunel N. Bayesian reconstruction of memories stored in neural networks from their connectivity. PLOS Computational Biology 19(1): e1010813 2023. 2021 May 16;

Published In

PLOS Computational Biology 19(1): e1010813 2023

Publication Date

May 16, 2021