scispace - formally typeset
G

Gergő Orbán

Researcher at Hungarian Academy of Sciences

Publications -  34
Citations -  2293

Gergő Orbán is an academic researcher from Hungarian Academy of Sciences. The author has contributed to research in topics: Population & Visual cortex. The author has an hindex of 13, co-authored 34 publications receiving 1959 citations. Previous affiliations of Gergő Orbán include University of Cambridge & Kalamazoo College.

Papers
More filters
Journal ArticleDOI

Spontaneous Cortical Activity Reveals Hallmarks of an Optimal Internal Model of the Environment

TL;DR: The authors used a Bayesian model of sensory cortical processing to compare stimulus-evoked and spontaneous neural activities to inferences and prior expectations in an internal model and predicted that they should match if the model is statistically optimal.
Journal ArticleDOI

Statistically optimal perception and learning: from behavior to neural representations

TL;DR: It is argued that learning an internal model of the sensory environment is another key aspect of the same statistical inference procedure and thus perception and learning need to be treated jointly.
Journal ArticleDOI

Bayesian learning of visual chunks by human observers

TL;DR: An ideal learner based on Bayesian model comparison that extracts and stores only those chunks of information that are minimally sufficient to encode a set of visual scenes is developed.
Journal ArticleDOI

Neural Variability and Sampling-Based Probabilistic Representations in the Visual Cortex

TL;DR: A theory in which the cortex performs probabilistic inference such that population activity patterns represent statistical samples from the inferred probability distribution is developed, predicting that perceptual uncertainty is directly encoded by the variability, rather than the average, of cortical responses.
Journal ArticleDOI

Representations of uncertainty in sensorimotor control.

TL;DR: Bayesian inference and learning models that have been successful in demonstrating the sensitivity of the sensorimotor system to different forms of uncertainty as well as recent studies aimed at characterizing the representation of the uncertainty at different computational levels are reviewed.