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Self-organized dynamics in plastic neural networks: bistability and coherence
Authors:Stiliyan Kalitzin  Bob W van Dijk  Henk Spekreijse
Institution:(1)  Stichting Epilepsie Instellingen Nederland, Achterweg 5, 2103 SW Heemstede, The Netherlands, NL;(2)  MEG Centrum KNAW, de Boelelaan 1117, 1081 HV Amsterdam, The Netherlands, NL;(3)  Department of Visual System Analysis, AMC, Meibergdreef 9, 1105 AZ Amsterdam, The Netherlands, NL
Abstract: In this paper, we study the combined dynamics of the neural activity and the synaptic efficiency changes in a fully connected network of biologically realistic neurons with simple synaptic plasticity dynamics including both potentiation and depression. Using a mean-field of technique, we analyzed the equilibrium states of neural networks with dynamic synaptic connections and found a class of bistable networks. For this class of networks, one of the stable equilibrium states shows strong connectivity and coherent responses to external input. In the other stable equilibrium, the network is loosely connected and responds non coherently to external input. Transitions between the two states can be achieved by positively or negatively correlated external inputs. Such networks can therefore switch between their phases according to the statistical properties of the external input. Non-coherent input can only “rcad” the state of the network, while a correlated one can change its state. We speculate that this property, specific for plastic neural networks, can give a clue to understand fully unsupervised learning models. Received: 8 August 1999 / Accepted in revised form: 16 March 2000
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