The last decade has seen the parallel emergence in computational neuroscience and machine learning of neural network structures which spread the input signal randomly to a higher dimensional space; perform a nonlinear activation; and then solve for a regression or classification output by means of a mathematical pseudoinverse operation. In the field of neuromorphic engineering, these methods are increasingly popular for synthesizing biologically plausible neural networks, but the “learning method”—computation of the pseudoinverse by singular value decomposition—is problematic both for biological plausibility and because it is not an online or an adaptive method. We present an online or incremental method of computing the pseudoinverse preci...
A common goal of computational neuroscience and of artificial intelligence re-search based on statis...
This paper presents a method for designing artificial neural network architectures. The method impli...
This paper presents some numerical experiments related to a new global "pseudo-backpropagation&...
A theoretical formulation of a fast learning method based on a pseudoinverse technique is presented....
The learning of neural networks is becoming more and more important. Researchers have constructed do...
We present a complete overview of the computational power of recurrent neural networks involved in a...
Working PaperPredictive coding (PDC) has recently attracted attention in the neuroscience and comput...
Finding useful representations of data in order to facilitate scientific knowledge generation is a u...
The success of deep networks and recent industry involvement in brain-inspired computing is igniting...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
The computation of the time-varying matrix pseudoinverse has become crucial in recent years for solv...
Hyperparameters and learning algorithms for neuromorphic hardware are usually chosen by hand to suit...
Interest in algorithms which dynamically construct neural networks has been growing in recent years....
An ambitious long-term goal for neuroevolution, which studies how artificial evolutionary processes ...
The success of deep learning is founded on learning rules with biologically implausible properties, ...
A common goal of computational neuroscience and of artificial intelligence re-search based on statis...
This paper presents a method for designing artificial neural network architectures. The method impli...
This paper presents some numerical experiments related to a new global "pseudo-backpropagation&...
A theoretical formulation of a fast learning method based on a pseudoinverse technique is presented....
The learning of neural networks is becoming more and more important. Researchers have constructed do...
We present a complete overview of the computational power of recurrent neural networks involved in a...
Working PaperPredictive coding (PDC) has recently attracted attention in the neuroscience and comput...
Finding useful representations of data in order to facilitate scientific knowledge generation is a u...
The success of deep networks and recent industry involvement in brain-inspired computing is igniting...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
The computation of the time-varying matrix pseudoinverse has become crucial in recent years for solv...
Hyperparameters and learning algorithms for neuromorphic hardware are usually chosen by hand to suit...
Interest in algorithms which dynamically construct neural networks has been growing in recent years....
An ambitious long-term goal for neuroevolution, which studies how artificial evolutionary processes ...
The success of deep learning is founded on learning rules with biologically implausible properties, ...
A common goal of computational neuroscience and of artificial intelligence re-search based on statis...
This paper presents a method for designing artificial neural network architectures. The method impli...
This paper presents some numerical experiments related to a new global "pseudo-backpropagation&...