AbstractThis paper assumes that cortical circuits have evolved to enable inference about the causes of sensory input received by the brain. This provides a principled specification of what neural circuits have to achieve. Here, we attempt to address how the brain makes inferences by casting inference as an optimisation problem. We look at how the ensuing recognition dynamics could be supported by directed connections and message-passing among neuronal populations, given our knowledge of intrinsic and extrinsic neuronal connections. We assume that the brain models the world as a dynamic system, which imposes causal structure on the sensorium. Perception is equated with the optimisation or inversion of this internal model, to explain sensory ...
Recently, experimental and theoretical research has focused on the brain's abilities to extract info...
To infer the causes of its sensations, the brain must call on a generative (predictive) model. This ...
AbstractThis paper provides an easy to follow tutorial on the free-energy framework for modelling pe...
AbstractThis paper assumes that cortical circuits have evolved to enable inference about the causes ...
This paper summarizes our recent attempts to integrate action and perception within a single optimiz...
(A) Continually evolving state of the environment gives rise to a sequence of stimuli , which are e...
Sensory cortices display a suite of ubiquitous dynamical features, such as ongoing noise variability...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...
In natural data, the class and intensity of stimuli are correlated. Current machine learning algorit...
International audienceAll of our perceptual experiences arise from the activity of neural population...
Thesis (Ph. D.)--University of Rochester. Dept. of Brain and Cognitive Sciences, 2010.What are the c...
Neuronal activity can be modulated by attention even while the sensory stimulus is held fixed. This ...
To infer the causes of its sensations, the brain must call on a generative (predictive) model. This ...
At any given moment, our brain processes multiple inputs from its different sensory modalities (visi...
At any given moment, our brain processes multiple inputs from its different sensory modalities (visi...
Recently, experimental and theoretical research has focused on the brain's abilities to extract info...
To infer the causes of its sensations, the brain must call on a generative (predictive) model. This ...
AbstractThis paper provides an easy to follow tutorial on the free-energy framework for modelling pe...
AbstractThis paper assumes that cortical circuits have evolved to enable inference about the causes ...
This paper summarizes our recent attempts to integrate action and perception within a single optimiz...
(A) Continually evolving state of the environment gives rise to a sequence of stimuli , which are e...
Sensory cortices display a suite of ubiquitous dynamical features, such as ongoing noise variability...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...
In natural data, the class and intensity of stimuli are correlated. Current machine learning algorit...
International audienceAll of our perceptual experiences arise from the activity of neural population...
Thesis (Ph. D.)--University of Rochester. Dept. of Brain and Cognitive Sciences, 2010.What are the c...
Neuronal activity can be modulated by attention even while the sensory stimulus is held fixed. This ...
To infer the causes of its sensations, the brain must call on a generative (predictive) model. This ...
At any given moment, our brain processes multiple inputs from its different sensory modalities (visi...
At any given moment, our brain processes multiple inputs from its different sensory modalities (visi...
Recently, experimental and theoretical research has focused on the brain's abilities to extract info...
To infer the causes of its sensations, the brain must call on a generative (predictive) model. This ...
AbstractThis paper provides an easy to follow tutorial on the free-energy framework for modelling pe...