Cognitive Modelling Aspects of Neurodevelopmental Disorders Using Standard and Oscillating Neighbourhood SOM Neural Networks
Spyridon Revithis, Nadine Marcus

TL;DR
This paper explores the use of standard and oscillating neighbourhood Self-Organising Maps (SOMs) for cognitive modelling of neurodevelopmental disorders, introducing a biologically plausible oscillating SOM variant and comparing its performance.
Contribution
It introduces an oscillating neighbourhood SOM model with increased biological plausibility for cognitive and neurodevelopmental disorder modelling.
Findings
Oscillating SOM closely mimics brain function more realistically.
Both SOM variants produce similar map formation behaviors.
The oscillating SOM enhances biological plausibility in cognitive models.
Abstract
Background/Introduction: In this paper, the neural network class of Self-Organising Maps (SOMs) is investigated in terms of its theoretical and applied validity for cognitive modelling, particularly of neurodevelopmental disorders. Methods: A modified SOM network type, with increased biological plausibility, incorporating a type of cortical columnar oscillation in the form of an oscillating Topological Neighbourhood (TN), is introduced and applied alongside the standard SOM. Aspects of two neurodevelopmental disorders, autism and schizophrenia, are modelled using SOM networks, based on existing neurocomputational theories. Both standard and oscillating-TN SOM training is employed with targeted modifications in the TN width function. Computer simulations are conducted using revised versions of a previously introduced model (IPSOM) based on a new modelling hypothesis.…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
