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  Distinct excitatory and inhibitory connectivity structures control the dynamics and computational capabilities of recurrent networks

Giannakakis, E., Buendia, V., Vinogradov, O., Khajehabdollahi, S., & Levina, A. (2024). Distinct excitatory and inhibitory connectivity structures control the dynamics and computational capabilities of recurrent networks. Poster presented at Computational and Systems Neuroscience Meeting (COSYNE 2024), Lisboa, Portugal.

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アイテムのパーマリンク: https://hdl.handle.net/21.11116/0000-000E-6FB2-D 版のパーマリンク: https://hdl.handle.net/21.11116/0000-000F-22DA-5
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 作成者:
Giannakakis, E, 著者                 
Buendia, V, 著者                 
Vinogradov, O, 著者                 
Khajehabdollahi, S, 著者                 
Levina, A1, 著者                 
所属:
1External Organizations, ou_persistent22              

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 要旨: Connectivity among cortical pyramidal neurons is far from random. Notably, it is known that there is a higher connection probability between similarly tuned neurons across cortical layers. In theoretical studies, this type of connectivity has been shown to generate rich dynamics in spiking networks. While the connectivity of inhibitory neurons is usually less specific than that of excitatory neurons, several studies have found different degrees of inhibitory specificity and diverse connectivity patterns, whose impact on population dynamics and computational implications are not fully understood. Here we link the presence of inhomogeneous localised, neuron-type specific clusters with complex dynamics that are associated with optimal performance in computational tasks. Using a reservoir computing framework, we evaluate the computational capabilities of balanced, recurrent net- works of rate neurons with neuron-type specific connectivity patterns. The reservoirs are composed of several interconnected clusters of E/I populations and are trained to simultaneously predict the trajectories of multiple chaotic time series. We study the impact of varying E and I clustering levels on network dynamics and identify the optimal topology for a complex time series reconstruction task. We find that the presence of different levels of excitatory and inhibitory clustering enables the precise control of the network’s dynamical state. In particular, we show that E and I clustering levels distinct and non-trivial effects on network dynamics and identify structures that control the network’s distance from the chaotic state. Finally, we demonstrate that a commonly observed cortical connectivity pattern of highly specific excitation and less specific (but not uniform) inhibition among similarly tuned neurons can maintain network dynamics close to the edge of chaos and may significantly contribute to the computational efficiency of brain networks.

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 日付: 2024-03
 出版の状態: オンラインで出版済み
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関連イベント

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イベント名: Computational and Systems Neuroscience Meeting (COSYNE 2024)
開催地: Lisboa, Portugal
開始日・終了日: 2024-02-29 - 2024-03-05

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出版物名: Computational and Systems Neuroscience Meeting (COSYNE 2024)
種別: 会議論文集
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出版社, 出版地: -
ページ: - 巻号: - 通巻号: 1-1014 開始・終了ページ: 58 - 59 識別子(ISBN, ISSN, DOIなど): -