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1.
J Comput Neurosci ; 33(3): 435-47, 2012 Dec.
Article in English | MEDLINE | ID: mdl-22644788

ABSTRACT

Jensen et al. (Learn Memory 3(2-3):243-256, 1996b) proposed an auto-associative memory model using an integrated short-term memory (STM) and long-term memory (LTM) spiking neural network. Their model requires that distinct pyramidal cells encoding different STM patterns are fired in different high-frequency gamma subcycles within each low-frequency theta oscillation. Auto-associative LTM is formed by modifying the recurrent synaptic efficacy between pyramidal cells. In order to store auto-associative LTM correctly, the recurrent synaptic efficacy must be bounded. The synaptic efficacy must be upper bounded to prevent re-firing of pyramidal cells in subsequent gamma subcycles. If cells encoding one memory item were to re-fire synchronously with other cells encoding another item in subsequent gamma subcycle, LTM stored via modifiable recurrent synapses would be corrupted. The synaptic efficacy must also be lower bounded so that memory pattern completion can be performed correctly. This paper uses the original model by Jensen et al. as the basis to illustrate the following points. Firstly, the importance of coordinated long-term memory (LTM) synaptic modification. Secondly, the use of a generic mathematical formulation (spiking response model) that can theoretically extend the results to other spiking network utilizing threshold-fire spiking neuron model. Thirdly, the interaction of long-term and short-term memory networks that possibly explains the asymmetric distribution of spike density in theta cycle through the merger of STM patterns with interaction of LTM network.


Subject(s)
CA3 Region, Hippocampal/physiology , Memory/physiology , Models, Neurological , Pattern Recognition, Physiological/physiology , Synapses/physiology , Action Potentials/physiology , Association Learning/physiology , CA3 Region, Hippocampal/cytology , Computer Simulation , Humans , Interneurons/physiology , Memory, Long-Term/physiology , Memory, Short-Term/physiology , Neural Networks, Computer , Pyramidal Cells/physiology , Receptors, AMPA/physiology , Receptors, N-Methyl-D-Aspartate/physiology , Synaptic Transmission/physiology
2.
IEEE Trans Neural Netw Learn Syst ; 23(2): 317-29, 2012 Feb.
Article in English | MEDLINE | ID: mdl-24808510

ABSTRACT

Appetitive operant conditioning in Aplysia for feeding behavior via the electrical stimulation of the esophageal nerve contingently reinforces each spontaneous bite during the feeding process. This results in the acquisition of operant memory by the contingently reinforced animals. Analysis of the cellular and molecular mechanisms of the feeding motor circuitry revealed that activity-dependent neuronal modulation occurs at the interneurons that mediate feeding behaviors. This provides evidence that interneurons are possible loci of plasticity and constitute another mechanism for memory storage in addition to memory storage attributed to activity-dependent synaptic plasticity. In this paper, an associative ambiguity correction-based neuro-fuzzy network, called appetitive reward-based pseudo-outer-product-compositional rule of inference [ARPOP-CRI(S)], is trained based on an appetitive reward-based learning algorithm which is biologically inspired by the appetitive operant conditioning of the feeding behavior in Aplysia. A variant of the Hebbian learning rule called Hebbian concomitant learning is proposed as the building block in the neuro-fuzzy network learning algorithm. The proposed algorithm possesses the distinguishing features of the sequential learning algorithm. In addition, the proposed ARPOP-CRI(S) neuro-fuzzy system encodes fuzzy knowledge in the form of linguistic rules that satisfies the semantic criteria for low-level fuzzy model interpretability. ARPOP-CRI(S) is evaluated and compared against other modeling techniques using benchmark time-series datasets. Experimental results are encouraging and show that ARPOP-CRI(S) is a viable modeling technique for time-variant problem domains.


Subject(s)
Aplysia/physiology , Appetite/physiology , Biomimetics/methods , Conditioning, Operant/physiology , Feeding Behavior/physiology , Neural Networks, Computer , Algorithms , Animals , Artificial Intelligence , Fuzzy Logic , Pattern Recognition, Automated/methods , Reward
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