Neural plasticity and in particular Hebbian learning play an important role in many research areas related to artficial life. By allowing artificial neural networks (ANNs) to adjust their weights in real time, Hebbian ANNs can adapt over their lifetime. However, even as researchers improve and extend Hebbian learning, a fundamental limitation of such systems is that they learn correlations between preexisting static features and network outputs. A Hebbian ANN could in principle achieve significantly more if it could accumulate new features over its lifetime from which to learn correlations. Interestingly, autoencoders, which have recently gained prominence in deep learning, are themselves in effect a kind of feature accumulator that extract...
Humans can learn several tasks in succession with minimal mutual interference but perform more poorl...
We present a framework for the self-organized formation of high level learning by a statistical prep...
ArticleWe present a mathematical analysis of the effects of Hebbian learning in random recurrent neu...
Neural plasticity and in particular Hebbian learning play an important role in many research areas r...
Neural plasticity and in particular Hebbian learning play an important role in many research areas r...
Neural plasticity and in particular Hebbian learning play an important role in many research areas r...
The novelty-raahn algorithm has been shown to effectively learn a desired behavior from raw inputs b...
A fundamental aspect of learning in biological neural networks is the plasticity property which allo...
. Motivation to study Hebbian learning arises from its neurophysiological plausibility and its suita...
It has been proposed that Hebbian learning could be responsible for the ontogeny of predictive mirro...
A fundamental aspect of learning in biological neural networks is the plasticity property which allo...
A fundamental aspect of learning in biological neural networks (BNNs) is the plasticity property whi...
In embodied computation (or morphological computation), part of the complexity of motor control is o...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
Humans can learn several tasks in succession with minimal mutual interference but perform more poorl...
We present a framework for the self-organized formation of high level learning by a statistical prep...
ArticleWe present a mathematical analysis of the effects of Hebbian learning in random recurrent neu...
Neural plasticity and in particular Hebbian learning play an important role in many research areas r...
Neural plasticity and in particular Hebbian learning play an important role in many research areas r...
Neural plasticity and in particular Hebbian learning play an important role in many research areas r...
The novelty-raahn algorithm has been shown to effectively learn a desired behavior from raw inputs b...
A fundamental aspect of learning in biological neural networks is the plasticity property which allo...
. Motivation to study Hebbian learning arises from its neurophysiological plausibility and its suita...
It has been proposed that Hebbian learning could be responsible for the ontogeny of predictive mirro...
A fundamental aspect of learning in biological neural networks is the plasticity property which allo...
A fundamental aspect of learning in biological neural networks (BNNs) is the plasticity property whi...
In embodied computation (or morphological computation), part of the complexity of motor control is o...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
Humans can learn several tasks in succession with minimal mutual interference but perform more poorl...
We present a framework for the self-organized formation of high level learning by a statistical prep...
ArticleWe present a mathematical analysis of the effects of Hebbian learning in random recurrent neu...