Artificial Neural Networks (ANNs) can be viewed as a mathematical model to simulate natural and biological systems on the basis of mimicking the information processing methods in the human brain. The capability of current ANNs only focuses on approximating arbitrary deterministic input-output mappings. However, these ANNs do not adequately represent the variability which is observed in the systems' natural settings as well as capture the complexity of the whole system behaviour. This thesis addresses the development of a new class of neural networks called Stochastic Neural Networks (SNNs) in order to simulate internal stochastic properties of systems. Developing a suitable mathematical model for SNNs is based on canonical representation of...
Anomalous diffusion is a diffusion process which Mean Square Displacement (MSD) is not a linear fun...
This introductory chapter establishes the theoretical and contextual background for the application ...
This thesis attempts to provide an understanding of the clustering mechanism observed in the olfacto...
Spiking neural networks (SNNs) are an emerging class of biologically inspired Artificial Neural Ne...
Artificial neural networks are important tools in machine learning and neuroscience; however, a dif...
The aim of this thesis was to study, using numerical simulation techniques, the possible effects of ...
This thesis presents new developments and applications of simulation methods in stochastic geometry....
In this thesis we studied a novel class of algorithms for unconstrained optimisation with particular...
This project is based on the CAS monograph Stochastic Loss Reserving Using Generalized Linear Models...
An interesting fact in nature is that if we observe agents (neurons, particles, animals, humans) beh...
abstract: In this dissertation, three complex material systems including a novel class of hyperunifo...
The copyright of this thesis rests with the author and no quotation from it or information derived f...
PhD ThesisIn current practice a plane stress framework comprising elastic moduli and Poisson’s rati...
Credit risk assessment plays a major role in the banks and financial institutions to prevent counter...
Neuronal cells (neurons) mainly transmit signals by action potentials or spikes. Neuronal electrical...
Anomalous diffusion is a diffusion process which Mean Square Displacement (MSD) is not a linear fun...
This introductory chapter establishes the theoretical and contextual background for the application ...
This thesis attempts to provide an understanding of the clustering mechanism observed in the olfacto...
Spiking neural networks (SNNs) are an emerging class of biologically inspired Artificial Neural Ne...
Artificial neural networks are important tools in machine learning and neuroscience; however, a dif...
The aim of this thesis was to study, using numerical simulation techniques, the possible effects of ...
This thesis presents new developments and applications of simulation methods in stochastic geometry....
In this thesis we studied a novel class of algorithms for unconstrained optimisation with particular...
This project is based on the CAS monograph Stochastic Loss Reserving Using Generalized Linear Models...
An interesting fact in nature is that if we observe agents (neurons, particles, animals, humans) beh...
abstract: In this dissertation, three complex material systems including a novel class of hyperunifo...
The copyright of this thesis rests with the author and no quotation from it or information derived f...
PhD ThesisIn current practice a plane stress framework comprising elastic moduli and Poisson’s rati...
Credit risk assessment plays a major role in the banks and financial institutions to prevent counter...
Neuronal cells (neurons) mainly transmit signals by action potentials or spikes. Neuronal electrical...
Anomalous diffusion is a diffusion process which Mean Square Displacement (MSD) is not a linear fun...
This introductory chapter establishes the theoretical and contextual background for the application ...
This thesis attempts to provide an understanding of the clustering mechanism observed in the olfacto...