International audienceHierarchical processing is pervasive in the brain, but its computational significance for learning under uncertainty is disputed. On the one hand, hierarchical models provide an optimal framework and are becoming increasingly popular to study cognition. On the other hand, non-hierarchical (flat) models remain influential and can learn efficiently, even in uncertain and changing environments. Here, we show that previously proposed hallmarks of hierarchical learning, which relied on reports of learned quantities or choices in simple experiments, are insufficient to categorically distinguish hierarchical from flat models. Instead, we present a novel test which leverages a more complex task, whose hierarchical structure al...
Humans build models of their environments and act according to what they have learnt. In simple expe...
From learning to play the piano to speaking a new language, reusing and recombining previously acqui...
Humans can implicitly learn complex perceptuo-motor skills over the course of large numbers of trial...
International audienceHierarchical processing is pervasive in the brain, but its computational signi...
Hierarchical processing is pervasive in the brain, but its computational significance for learning u...
(A) Divergent predictions of hierarchical versus flat learning models. Two fragments of sequences ar...
Humans have the fascinating ability to achieve goals in a complex and constantly changing world, sti...
Human perception and learning is thought to rely on a hierarchical generative model that is continuo...
This simulation is inspired by a previous study by Behrens et al [2], in which the reward probabilit...
From a computational perspective, the primary goal of cognitive science is to infer the influence of...
Our immediate observations must be supplemented with contextual information to resolve ambiguities. ...
We can make good decisions by capturing and exploiting the structure of the natural world. It is tho...
Humans can implicitly learn complex perceptuo-motor skills over the course of large numbers of trial...
Humans build models of their environments and act according to what they have learnt. In simple expe...
In previous work [3] we have proposed Hierarchical Bayesian Networks (HBNs) as an extension of Bay...
Humans build models of their environments and act according to what they have learnt. In simple expe...
From learning to play the piano to speaking a new language, reusing and recombining previously acqui...
Humans can implicitly learn complex perceptuo-motor skills over the course of large numbers of trial...
International audienceHierarchical processing is pervasive in the brain, but its computational signi...
Hierarchical processing is pervasive in the brain, but its computational significance for learning u...
(A) Divergent predictions of hierarchical versus flat learning models. Two fragments of sequences ar...
Humans have the fascinating ability to achieve goals in a complex and constantly changing world, sti...
Human perception and learning is thought to rely on a hierarchical generative model that is continuo...
This simulation is inspired by a previous study by Behrens et al [2], in which the reward probabilit...
From a computational perspective, the primary goal of cognitive science is to infer the influence of...
Our immediate observations must be supplemented with contextual information to resolve ambiguities. ...
We can make good decisions by capturing and exploiting the structure of the natural world. It is tho...
Humans can implicitly learn complex perceptuo-motor skills over the course of large numbers of trial...
Humans build models of their environments and act according to what they have learnt. In simple expe...
In previous work [3] we have proposed Hierarchical Bayesian Networks (HBNs) as an extension of Bay...
Humans build models of their environments and act according to what they have learnt. In simple expe...
From learning to play the piano to speaking a new language, reusing and recombining previously acqui...
Humans can implicitly learn complex perceptuo-motor skills over the course of large numbers of trial...