The aim of this work is to introduce modular processing mechanisms for cortical functions implemented
in networks of spiking neurons. Neural maps are a feature of cortical processing
found to be generic throughout sensory cortical areas, and self-organisation to the fundamental
properties of input spike trains has been shown to be an important property of cortical organisation.
Additionally, oscillatory behaviour, temporal coding of information, and learning through
spike timing dependent plasticity are all frequently observed in the cortex. The traditional
self-organising map (SOM) algorithm attempts to capture the computational properties of this
cortical self-organisation in a neural network. As such, a cognitive module for a spiking SOM
using oscillations, phasic coding and STDP has been implemented. This model is capable of
mapping to distributions of input data in a manner consistent with the traditional SOM algorithm,
and of categorising generic input data sets. Higher-level cortical processing areas appear
to feature a hierarchical category structure that is founded on a feature-based object representation.
The spiking SOM model is therefore extended to facilitate input patterns in the form of
sets of binary feature-object relations, such as those seen in the field of formal concept analysis.
It is demonstrated that this extended model is capable of learning to represent the hierarchical
conceptual structure of an input data set using the existing learning scheme. Furthermore,
manipulations of network parameters allow the level of hierarchy used for either learning or
recall to be adjusted, and the network is capable of learning comparable representations when
trained with incomplete input patterns. Together these two modules provide related approaches
to the generation of both topographic mapping and hierarchical representation of input spaces
that can be potentially combined and used as the basis for advanced spiking neuron models of
the learning of complex representations.
Date of Award | 2013 |
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Original language | English |
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Awarding Institution | |
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Supervisor | Thomas Wennekers (Director of Studies (First Supervisor)), Gayle Letherby (Other Supervisor) & Sue Denham (Other Supervisor) |
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- Computational Neuroscience
- Self Organising Maps
- Spiking Neurons
- Unsupervised Learning
Self Organisation and Hierarchical Concept Representation in Networks of Spiking Neurons
Rumbell, T. (Author). 2013
Student thesis: PhD