Recent convolution-based models of human memory (e.g. Lewandowsky & Murdock, 1989), have accounted for a wide range of data. However such models require the relevant mathematical operations to be provided to the network. Connectionist models, in contrast, have generally addressed different data, and not all architectures are appropriate for modelling single-trial learning. Furthermore, they tend to exhibit catastrophic interference in multiple list learning. In this paper we compare the ability of convolution-based models and DARNET (Developmental Associative Recall NETwork), to account for human memory data. DARNET is a connectionist approach to human memory in which the system gradually learns to associate vectors, in one trial, into a ...
In this paper a binary associative network model with minimal number of connections is examined and ...
This article presents a novel computational framework for modeling cognitive development. The new mo...
The dissertation represents a critical evaluation of the major connectionist theories of human cogni...
Recent convolution-based models of human memory (e.g. Lewandowsky & Murdock, 1989), have accounted f...
The mathematical operation of convolution is used as an associative mechanism by several recent infl...
An associative memory with parallel architecture is presented. The neurons are modelled by perceptro...
Simulation results show that DARNET, a network model that learns using a gradient-descent procedure ...
This paper describes evaluative work carried out with a connectionist model of semantic memory inves...
Human memory is associative and emerges from the behaviour of neurons. Two models, based on commonly...
Abstract: "Many recent connectionist models can be categorized as associative memories or pattern cl...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
Theories of Extended Mind have evolved in waves to reach the present state of disagreement with rega...
110 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1997.While connectionist models ha...
A connectionist simulation of familiar face recognition by humans, which incorporates aspects of the...
Classical symbolic computational models of cognition are at variance with the empirical findings in ...
In this paper a binary associative network model with minimal number of connections is examined and ...
This article presents a novel computational framework for modeling cognitive development. The new mo...
The dissertation represents a critical evaluation of the major connectionist theories of human cogni...
Recent convolution-based models of human memory (e.g. Lewandowsky & Murdock, 1989), have accounted f...
The mathematical operation of convolution is used as an associative mechanism by several recent infl...
An associative memory with parallel architecture is presented. The neurons are modelled by perceptro...
Simulation results show that DARNET, a network model that learns using a gradient-descent procedure ...
This paper describes evaluative work carried out with a connectionist model of semantic memory inves...
Human memory is associative and emerges from the behaviour of neurons. Two models, based on commonly...
Abstract: "Many recent connectionist models can be categorized as associative memories or pattern cl...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
Theories of Extended Mind have evolved in waves to reach the present state of disagreement with rega...
110 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1997.While connectionist models ha...
A connectionist simulation of familiar face recognition by humans, which incorporates aspects of the...
Classical symbolic computational models of cognition are at variance with the empirical findings in ...
In this paper a binary associative network model with minimal number of connections is examined and ...
This article presents a novel computational framework for modeling cognitive development. The new mo...
The dissertation represents a critical evaluation of the major connectionist theories of human cogni...