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Models that contain the Model Topic : Attractor Neural Network

(A recurrently connected neural network with iterative activation update. A noisy initial pattern (of neural activity) will converge to one of a set of template patterns that is stored in the network by its weighted connections. Because of this property it is also a model of Associative Memory. The Continuous Attractor Network uses continuous activation values (~ firing rates), while the Binary Attractor Network uses {0,1} or {-1,1} as possible neuronal activations.)

   Models
Cortex learning models (Weber at al. 2006, Weber and Triesch, 2006, Weber and Wermter 2006/7)
Feedforward heteroassociative network with HH dynamics (Lytton 1998)
Fixed point attractor (Hasselmo et al 1995)
Fronto-parietal visuospatial WM model with HH cells (Edin et al 2007)
High dimensional dynamics and low dimensional readouts in neural microcircuits (Haeusler et al 2006)
Hopfield and Brody model (Hopfield, Brody 2000)
Multistability of clustered states in a globally inhibitory network (Chandrasekaran et al. 2009)


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