Models of adaptation and neural plasticity are often demonstrated in robotic scenarios with heavily pre-processed and regulated information streams to provide learning algorithms with appropriate, well timed, and meaningful data to match the assumptions of learning rules. On the contrary, natural scenarios are often rich of raw, asynchronous, overlapping and uncertain inputs and outputs whose relationships and meaning are progressively acquired, disambiguated, and used for further learning. Therefore, recent research efforts focus on neural embodied systems that rely less on well timed and pre-processed inputs, but rather extract autonomously relationships and features in time and space. In particular, realistic and more complete models of ...
Building robots that are able to efficiently operate in the real world is a formidable challenge. Fu...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Designing controllers for autonomous robots is not an exact science, and there are few guiding princ...
Models of adaptation and neural plasticity are often demonstrated in robotic scenarios with heavily ...
Models of adaptation and neural plasticity are often demonstrated in robotic scenarios with heavily ...
Short and long term plasticity as cause-effect hypothesis testing in robotic ambiguous scenario
Learning in human-robot interaction, as well as in human-to-human situations, is characterised by no...
Artificial Neural Networks for online learning problems are often implemented with synaptic plastici...
Single–trial learning is studied in an evolved robot model of synaptic spike–timing–dependent plasti...
The degree by which a species can adapt to the demands of its changing environment defines how well ...
Biological organisms continuously select and sample information used by their neural structures for ...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...
Soltoggio A, Lemme A, Reinhart F, Steil JJ. Rare neural correlations implement robotic conditioning ...
Self-organization in biological nervous systems during the lifetime is known to largely occur throug...
Plastic spiking neural networks are synthesized for phototactic robots using evolutionary techniques...
Building robots that are able to efficiently operate in the real world is a formidable challenge. Fu...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Designing controllers for autonomous robots is not an exact science, and there are few guiding princ...
Models of adaptation and neural plasticity are often demonstrated in robotic scenarios with heavily ...
Models of adaptation and neural plasticity are often demonstrated in robotic scenarios with heavily ...
Short and long term plasticity as cause-effect hypothesis testing in robotic ambiguous scenario
Learning in human-robot interaction, as well as in human-to-human situations, is characterised by no...
Artificial Neural Networks for online learning problems are often implemented with synaptic plastici...
Single–trial learning is studied in an evolved robot model of synaptic spike–timing–dependent plasti...
The degree by which a species can adapt to the demands of its changing environment defines how well ...
Biological organisms continuously select and sample information used by their neural structures for ...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...
Soltoggio A, Lemme A, Reinhart F, Steil JJ. Rare neural correlations implement robotic conditioning ...
Self-organization in biological nervous systems during the lifetime is known to largely occur throug...
Plastic spiking neural networks are synthesized for phototactic robots using evolutionary techniques...
Building robots that are able to efficiently operate in the real world is a formidable challenge. Fu...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Designing controllers for autonomous robots is not an exact science, and there are few guiding princ...