Real organisms live in a world full of uncertain situations and have evolved cognitive mechanisms to cope with problems based on actions and perceptions which are not always reliable. One aspect could be related with the following questions: could neural uncertainty be beneficial from an evolutionary robotics perspective? Is uncertainty a possible mechanism for obtaining more robust artificial systems? Using the minimal cognition approach, we show that moderate levels of uncertainty in the dynamics of continuous-time recurrent networks correlates positively with behavioral robustness of the system. This correlation is possible through internal neural changes depending on the uncertainty level. We also find that controllers evolved with mode...
Neural signals are corrupted by noise and this places limits on information processing. We review th...
In neural network modeling, the goal often is to get a most specific crisp output (e.g., binary clas...
There is a growing trend in the cognitive sciences to conceive of cognitive behavior as being distri...
Uncertainty is inherent in neural processing due to noise in sensation and the sensory transmission ...
The study of the brain's representations of uncertainty is a central topic in neuroscience. Unlike m...
Uncertainty is ubiquitous in our sensorimotor interactions, arising from factors such as sensory and...
Adaptive decision making depends on an agent's ability to use environmental signals to reduce uncert...
Recent advances in movement neuroscience suggest that sensorimotor control can be considered as a co...
Continuous-time recurrent neural networks affected by random additive noise are evolved to produce p...
Theoretical discussions and computational models of bio-inspired embodied and situated agents are p...
Recent advances in movement neuroscience suggest that sensorimotor control can be considered as a co...
Uncertainty is a ubiquitous property of both physical and mental realms. Goal-directed actions that ...
Recent advances in theoretical neuroscience suggest that sensorimotor control can be considered as a...
Recent advances in movement neuroscience suggest that sensorimotor control can be considered as a co...
Diversity of environments is a key challenge that causes learned robotic controllers to fail due to ...
Neural signals are corrupted by noise and this places limits on information processing. We review th...
In neural network modeling, the goal often is to get a most specific crisp output (e.g., binary clas...
There is a growing trend in the cognitive sciences to conceive of cognitive behavior as being distri...
Uncertainty is inherent in neural processing due to noise in sensation and the sensory transmission ...
The study of the brain's representations of uncertainty is a central topic in neuroscience. Unlike m...
Uncertainty is ubiquitous in our sensorimotor interactions, arising from factors such as sensory and...
Adaptive decision making depends on an agent's ability to use environmental signals to reduce uncert...
Recent advances in movement neuroscience suggest that sensorimotor control can be considered as a co...
Continuous-time recurrent neural networks affected by random additive noise are evolved to produce p...
Theoretical discussions and computational models of bio-inspired embodied and situated agents are p...
Recent advances in movement neuroscience suggest that sensorimotor control can be considered as a co...
Uncertainty is a ubiquitous property of both physical and mental realms. Goal-directed actions that ...
Recent advances in theoretical neuroscience suggest that sensorimotor control can be considered as a...
Recent advances in movement neuroscience suggest that sensorimotor control can be considered as a co...
Diversity of environments is a key challenge that causes learned robotic controllers to fail due to ...
Neural signals are corrupted by noise and this places limits on information processing. We review th...
In neural network modeling, the goal often is to get a most specific crisp output (e.g., binary clas...
There is a growing trend in the cognitive sciences to conceive of cognitive behavior as being distri...