Human memory can store large amount of information. Nevertheless, recalling is often a challenging task. In a classical free recall paradigm, where participants are asked to repeat a briefly presented list of words, people make mistakes for lists as short as 5 words. We present a model for memory retrieval based on a Hopfield neural network where transition between items are determined by similarities in their long-term memory representations. Meanfield analysis of the model reveals stable states of the network corresponding (1) to singlememory representations and (2) intersection betweenmemory representations. We show that oscillating feedback inhibition in the presence of noise induces transitions between these states triggering the retri...
Memory is thought to be divided into two separate stores, one short term and one long term. The mech...
We have recently developed a neural network learning algorithm that accounts for how we strengthen w...
This paper presents a neural model that learns episodic traces in response to a continuous stream of...
Retrieval-induced forgetting (RIF) refers to the finding that retrieving a memory can impair subsequ...
This paper presents an Attractor Neural Network (ANN) model of Re-call and Recognition. It is shown ...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
Retrieval-induced forgetting (RIF) refers to the finding that retrieving a memory can impair subsequ...
The Hopfield model is a pioneering neural network model with associative memory retrieval. The analy...
Attractor networks are an influential theory for memory storage in brain systems. This theory has re...
Despite the complexity of human memory, paradigms like free recall have revealed robust qualitative ...
Memory is a fundamental part of computational systems like the human brain. Theoretical models ident...
We perform an extensive numerical investigation on the retrieval dynamics of the synchronous Hopfiel...
Hopfield-type, neural-network models. A mathematical framework for cornporing the two models is deve...
Memory is thought to be divided into two separate stores, one short term and one long term. The mech...
We have recently developed a neural network learning algorithm that accounts for how we strengthen w...
This paper presents a neural model that learns episodic traces in response to a continuous stream of...
Retrieval-induced forgetting (RIF) refers to the finding that retrieving a memory can impair subsequ...
This paper presents an Attractor Neural Network (ANN) model of Re-call and Recognition. It is shown ...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
Retrieval-induced forgetting (RIF) refers to the finding that retrieving a memory can impair subsequ...
The Hopfield model is a pioneering neural network model with associative memory retrieval. The analy...
Attractor networks are an influential theory for memory storage in brain systems. This theory has re...
Despite the complexity of human memory, paradigms like free recall have revealed robust qualitative ...
Memory is a fundamental part of computational systems like the human brain. Theoretical models ident...
We perform an extensive numerical investigation on the retrieval dynamics of the synchronous Hopfiel...
Hopfield-type, neural-network models. A mathematical framework for cornporing the two models is deve...
Memory is thought to be divided into two separate stores, one short term and one long term. The mech...
We have recently developed a neural network learning algorithm that accounts for how we strengthen w...
This paper presents a neural model that learns episodic traces in response to a continuous stream of...