Artificial neural networks are important tools in machine learning and neuroscience; however, a difficult step in their implementation is the selection of the neural network size and structure. This thesis develops fundamental theory on algorithms for constructing neurons in spiking neural networks and simulations of neuroplasticity. This theory is applied in the development of a constructive algorithm based on spike-timing- dependent plasticity (STDP) that achieves continual one-shot learning of hidden spike patterns through neuron construction. The theoretical developments in this thesis begin with the proposal of a set of definitions of the fundamental components of constructive neural networks. Disagreement in terminology ac...
Cortical neural networks generate a ground state of highly irregular spiking activity whose dynamics...
University of Minnesota M.S. thesis. June 2015. Major: Electrical Engineering. Advisor: Chris Kim. ...
The dynamics of biological neural networks are of great interest to neuroscientists and are frequent...
Nearly all neuronal information processing and inter¬neuronal communication in the brain involves ac...
Neuronal cells (neurons) mainly transmit signals by action potentials or spikes. Neuronal electrical...
A "complex" system typically has a relatively large number of dynamically interacting components and...
At the simplest dynamical level, neurons can be understood as integrators. That is, neurons accumula...
Spiking neural networks (SNNs) are an emerging class of biologically inspired Artificial Neural Ne...
The human brain is composed of millions of neurons, firing spikes according to their membrane potent...
Impulsní neuronové sítě jsou variantou umělých neuronových sítí, které jsou navrženy, aby simulovaly...
Nonlinear techniques for signal processing and recognition have the promise of achieving systems whi...
With the overall goal of illuminating the relationship between neural dynamics and neural network s...
Bi-directional interfacing electronics with living electrogenic cells has been used widely in neuros...
Machine learning is a rapidly accelerating tool and technology used for countless applications in th...
This thesis presents a neuron model and framework for the architecture and interaction of neurons in...
Cortical neural networks generate a ground state of highly irregular spiking activity whose dynamics...
University of Minnesota M.S. thesis. June 2015. Major: Electrical Engineering. Advisor: Chris Kim. ...
The dynamics of biological neural networks are of great interest to neuroscientists and are frequent...
Nearly all neuronal information processing and inter¬neuronal communication in the brain involves ac...
Neuronal cells (neurons) mainly transmit signals by action potentials or spikes. Neuronal electrical...
A "complex" system typically has a relatively large number of dynamically interacting components and...
At the simplest dynamical level, neurons can be understood as integrators. That is, neurons accumula...
Spiking neural networks (SNNs) are an emerging class of biologically inspired Artificial Neural Ne...
The human brain is composed of millions of neurons, firing spikes according to their membrane potent...
Impulsní neuronové sítě jsou variantou umělých neuronových sítí, které jsou navrženy, aby simulovaly...
Nonlinear techniques for signal processing and recognition have the promise of achieving systems whi...
With the overall goal of illuminating the relationship between neural dynamics and neural network s...
Bi-directional interfacing electronics with living electrogenic cells has been used widely in neuros...
Machine learning is a rapidly accelerating tool and technology used for countless applications in th...
This thesis presents a neuron model and framework for the architecture and interaction of neurons in...
Cortical neural networks generate a ground state of highly irregular spiking activity whose dynamics...
University of Minnesota M.S. thesis. June 2015. Major: Electrical Engineering. Advisor: Chris Kim. ...
The dynamics of biological neural networks are of great interest to neuroscientists and are frequent...