Arguably the most significant challenge in modern machine learning regards how we address the complexities of Spatio- and Spectro-Temporal Data (SSTD); i.e., data with some spatial, spectral, and temporal component. Addressing this issue is of vital importance to our understanding of the world around us. Traditional machine learning techniques like the Support Vector Machine and Multi-Layer Perceptron struggle with the implicit representation of these characteristics. Typically, traditional ML abstracts away one or more of these components - and with it, a significant proportion of the information implicit in the relationships between place and time in the data. When we begin to look at brain data, seismic data, ecological data - in fac...
Introduction: Capturing the nature of spatio/spectro-temporal data (SSTD) is not an easy task nor i...
The brain functions as a spatio-temporal information processing machine and deals extremely well wit...
The talk presents a brief overview of contemporary methods for neurocomputation, including: evolving...
Arguably the most significant challenge in modern machine learning regards how we address the comple...
Spatio- and spectro-temporal data (SSTD) are the most common types of data collected in many domain ...
This thesis proposes methods employing an evolving Spiking Neural Network (SNN) architecture for the...
Spatio- and spectro-temporal data (SSTD) are the most common types of data collected in many domain ...
The paper describes a new type of evolving connectionist systems (ECOS) called evolving spatio-tempo...
The paper describes a new type of evolving connectionist systems (ECOS) called evolving spatio-tempo...
Clustering is a fundamental data processing technique. While clustering of static (vector based) dat...
The paper presents a novel method and system for personalised (individualised) modelling of spatio/s...
Spatio- and spectro-temporal data are the most common data in many domain areas, including bioinform...
The use of Electroencephalography (EEG) in Brain Computer Interface (BCI) domain presents a challeng...
A new framework in this study, which uses spiking neural networks for learning spectro-temporal and ...
The fields of neuroscience and artificial intelligence have a long and entwined history. In recent t...
Introduction: Capturing the nature of spatio/spectro-temporal data (SSTD) is not an easy task nor i...
The brain functions as a spatio-temporal information processing machine and deals extremely well wit...
The talk presents a brief overview of contemporary methods for neurocomputation, including: evolving...
Arguably the most significant challenge in modern machine learning regards how we address the comple...
Spatio- and spectro-temporal data (SSTD) are the most common types of data collected in many domain ...
This thesis proposes methods employing an evolving Spiking Neural Network (SNN) architecture for the...
Spatio- and spectro-temporal data (SSTD) are the most common types of data collected in many domain ...
The paper describes a new type of evolving connectionist systems (ECOS) called evolving spatio-tempo...
The paper describes a new type of evolving connectionist systems (ECOS) called evolving spatio-tempo...
Clustering is a fundamental data processing technique. While clustering of static (vector based) dat...
The paper presents a novel method and system for personalised (individualised) modelling of spatio/s...
Spatio- and spectro-temporal data are the most common data in many domain areas, including bioinform...
The use of Electroencephalography (EEG) in Brain Computer Interface (BCI) domain presents a challeng...
A new framework in this study, which uses spiking neural networks for learning spectro-temporal and ...
The fields of neuroscience and artificial intelligence have a long and entwined history. In recent t...
Introduction: Capturing the nature of spatio/spectro-temporal data (SSTD) is not an easy task nor i...
The brain functions as a spatio-temporal information processing machine and deals extremely well wit...
The talk presents a brief overview of contemporary methods for neurocomputation, including: evolving...