The authors present the results of their analysis of an auto-associator for use with sparse representations. Their recognition model using it exhibits a list-length effect but no list-strength effect, a dissociation that current models have difficulty producing. Data on the effects of similarity and strengthening that indicate a dissociation between recognition and frequency judgments are also addressed. Receiver operating characteristic curves for the model have slopes between 0.5 and 1.0 and achieve this ratio in a novel way. The model can also predict latencies naturally. The authors' cued-recall model uses an architecture similar to that of the recognition model and where applicable the same parameters. It predicts appropriate amounts o...
International audienceAssociative memories are data structures addressed using part of the content r...
A Self-organizing neural network model for locus-Addressable associative memory, and binary pattern ...
Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination asp...
International audienceA major issue in statistical machine learning is the design of a representa-ti...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
Cued recall and item recognition are considered the standard episodic memory retrieval tasks. Howeve...
Many approaches to transform classification problems from non-linear to linear by feature transforma...
This paper presents an Attractor Neural Network (ANN) model of Re-call and Recognition. It is shown ...
The main objective of an auto-encoder is to reconstruct the input signals via a feature representati...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Abstract—The CA3 region of the hippocampus acts as an auto-associative memory and is responsible for...
According to one of the folk tenets neural associative memories are robust, i.e. computation in them...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
International audienceWe study various models of associative memories with sparse information, i.e. ...
International audienceAssociative memories are data structures addressed using part of the content r...
A Self-organizing neural network model for locus-Addressable associative memory, and binary pattern ...
Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination asp...
International audienceA major issue in statistical machine learning is the design of a representa-ti...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
Cued recall and item recognition are considered the standard episodic memory retrieval tasks. Howeve...
Many approaches to transform classification problems from non-linear to linear by feature transforma...
This paper presents an Attractor Neural Network (ANN) model of Re-call and Recognition. It is shown ...
The main objective of an auto-encoder is to reconstruct the input signals via a feature representati...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Abstract—The CA3 region of the hippocampus acts as an auto-associative memory and is responsible for...
According to one of the folk tenets neural associative memories are robust, i.e. computation in them...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
International audienceWe study various models of associative memories with sparse information, i.e. ...
International audienceAssociative memories are data structures addressed using part of the content r...
A Self-organizing neural network model for locus-Addressable associative memory, and binary pattern ...
Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination asp...