Computational Models of Brain and Behavior 2017
DOI: 10.1002/9781119159193.ch23
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Models of Dynamical Synapses and Cortical Development

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Cited by 4 publications
(8 citation statements)
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“…At present, SNNs have been well implemented in some brain regions modeling and cognitive functions simulation, like image classification (Zhang et al, 2018b), working memory maintenance (Zhang et al, 2016), decision-making tasks (Héricé et al, 2016;Zhao et al, 2018), cortical development (Khalil et al, 2017a), contingency perception (Pitti et al, 2009) etc. However, even though the training methods proposed by Zhang et al (2018a) and Shrestha and Orchard (2018) make SNNs performance comparable to ANNs, they are at the cost of a large amount of time.…”
Section: Introductionmentioning
confidence: 99%
“…At present, SNNs have been well implemented in some brain regions modeling and cognitive functions simulation, like image classification (Zhang et al, 2018b), working memory maintenance (Zhang et al, 2016), decision-making tasks (Héricé et al, 2016;Zhao et al, 2018), cortical development (Khalil et al, 2017a), contingency perception (Pitti et al, 2009) etc. However, even though the training methods proposed by Zhang et al (2018a) and Shrestha and Orchard (2018) make SNNs performance comparable to ANNs, they are at the cost of a large amount of time.…”
Section: Introductionmentioning
confidence: 99%
“…Here, we designed a Spike Neural Network (SNN) model to monitor the neural firing activity responses within the two physiological states of GABA A . Following fine-tuning and optimization of our model (see Supplementary Materials: Figures S.1.1, S.1.2 in Khalil et al, 2017a,b), we systematically segregated it into several scenarios (Figure 1; Appendix A, C.2: Network Scenario). For each network scenario, we relied on biophysical parameters that had been intensively used in various experiments and biophysical studies (Appendix A, E: Model Parameters, see also Khalil et al, 2017a,b).…”
Section: Methodsmentioning
confidence: 99%
“…This has been shown to be one of the principal relevant parameters for macroscopic quantities (Yger et al, 2011). Finally, we used proportions for a lateral spread length between neighbor neurons {1, 2, …,10%} and we selected reciprocal values for both parameters, which resulted in eliciting a reasonable firing activity response (Figure 1 in Khalil et al, 2017a,b, see also Appendix A, C: Connectivity). The design of the network scenarios relies on the variations in the percentages of (ϵ) and (σ c ).…”
Section: Methodsmentioning
confidence: 99%
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