001     1031974
005     20241108205839.0
037 _ _ |a FZJ-2024-05898
041 _ _ |a English
100 1 _ |a Ito, Junji
|0 P:(DE-Juel1)144576
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|e Corresponding author
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111 2 _ |a Bernstein Conference 2024
|c Frankfurt
|d 2024-09-29 - 2024-10-02
|w Germany
245 _ _ |a Synfire chains in random weight threshold unit network
260 _ _ |c 2024
336 7 _ |a Conference Paper
|0 33
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336 7 _ |a Other
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520 _ _ |a Synfire chains have been postulated as a model for stable propagation of synchronous spikes through the cortical networks [1,2,3]. Synfire-chain-like activity can also be found in spiking artificial neural networks trained for a classification task [4]. Understanding the mechanism for generating such activity would provide better insights into the functioning of real brains and artificial neural networks. Here we consider an analytically tractable network of binary units to study the conditions for the emergence of synchronous spikes and their stable propagation.Our network is organized in layers of $N$ threshold units, each taking a state $x\in\{0,1\}$ depending on its input $I$ as $x=H(I-\theta)$ ($H$: Heaviside step function, $\theta$: threshold). The connections from layer $l$ to $l+1$ are represented by a matrix $W^l$, whose elements are Gaussian IID random variables with mean 0 and variance $1/N$. States of all units are initially set to 0. Then a fraction $P^1$ of layer 1 units are activated (their states set to 1) at different timings. We interpret the state change of a unit as a spike generation by that unit. The spikes generated in layer $l$ are propagated to layer $l+1$ through the matrix $W^l$, providing time-varying inputs to activate layer $l+1$ units and generate their spikes.Based on the formalism laid out in [5], we derive a relation between the fraction $p^l(t)$ and $p^{l+1}(t)$ of active units at time $t$ in layer $l$ and $l+1$, respectively, as $p^{l+1}(t)=\mathrm{erfc}\big(\theta/\sqrt{2p^l(t)}\big)/2$ (Eq. 1). Iteratively applying this relation results in the activity converging either to $p^\infty(t)=0$ or to $p^\infty(t)=p_s$, depending on whether $p^1(t) \geq p_u$ or $p^1(t) \leq p_u$, respectively, with $p_s$ and $p_u$ as shown in the figure. Since $p^1(t)$ is a monotonically increasing function of time, this result means that, as the activity propagates through layers, the timing of the state change converges to the timing at which $p^1$ exceeds $p_u$. Hence, the spikes become more synchronous and activate the successive layer more reliably.We also show that, the greater $P^1$ is, the earlier this converging timing becomes, meaning that the network naturally converts the activity level of the initial layer to the timing of the spike pulse packet that propagates through the layers. We demonstrate this in a network with multiple synfire chains embedded and discuss the implications of this effect to cortical information processing.
536 _ _ |a 5231 - Neuroscientific Foundations (POF4-523)
|0 G:(DE-HGF)POF4-5231
|c POF4-523
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536 _ _ |a HBP SGA2 - Human Brain Project Specific Grant Agreement 2 (785907)
|0 G:(EU-Grant)785907
|c 785907
|f H2020-SGA-FETFLAG-HBP-2017
|x 1
536 _ _ |a HBP SGA3 - Human Brain Project Specific Grant Agreement 3 (945539)
|0 G:(EU-Grant)945539
|c 945539
|f H2020-SGA-FETFLAG-HBP-2019
|x 2
536 _ _ |a HAF - Helmholtz Analytics Framework (ZT-I-0003)
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536 _ _ |a JL SMHB - Joint Lab Supercomputing and Modeling for the Human Brain (JL SMHB-2021-2027)
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536 _ _ |a Algorithms of Adaptive Behavior and their Neuronal Implementation in Health and Disease (iBehave-20220812)
|0 G:(DE-Juel-1)iBehave-20220812
|c iBehave-20220812
|x 5
536 _ _ |a GRK 2416 - GRK 2416: MultiSenses-MultiScales: Neue Ansätze zur Aufklärung neuronaler multisensorischer Integration (368482240)
|0 G:(GEPRIS)368482240
|c 368482240
|x 6
700 1 _ |a Oberste-Frielinghaus, Jonas
|0 P:(DE-Juel1)186076
|b 1
|u fzj
700 1 _ |a Kurth, Anno
|0 P:(DE-Juel1)176776
|b 2
|u fzj
700 1 _ |a Grün, Sonja
|0 P:(DE-Juel1)144168
|b 3
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913 1 _ |a DE-HGF
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|v Neuromorphic Computing and Network Dynamics
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914 1 _ |y 2024
920 1 _ |0 I:(DE-Juel1)IAS-6-20130828
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920 1 _ |0 I:(DE-Juel1)INM-10-20170113
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|l Jara-Institut Brain structure-function relationships
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980 _ _ |a conf
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