Confronted with a rich sensory environment, the brain must learn statistical regularities across sensory domains to construct causal models of the world. Here, we used functional magnetic resonance imaging and dynamic causal modeling (DCM) to furnish neurophysiological evidence that statistical associations are learnt, even when task-irrelevant. Subjects performed an audio-visual target-detection task while being exposed to distractor stimuli. Unknown to them, auditory distractors predicted the presence or absence of subsequent visual distractors. We modeled incidental learning of these associations using a Rescorla-Wagner (RW) model. Activity in primary visual cortex and putamen reflected learning-dependent surprise: these areas responded ...
It has recently been suggested that learning signals in the amygdala might be best characterized by ...
Learning depends on surprise and is not engendered by predictable occurrences. In this functional ma...
The encoding of sensory information in the human brain is thought to be optimised by two principal p...
Contains fulltext : 218333.pdf (publisher's version ) (Open Access)Confronted with...
Confronted with a rich sensory environment, the brain must learn statistical regularities across sen...
Confronted with a rich sensory environment, the brain must learn statistical regularities across sen...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
One of the fundaments of associative learning theories is that surprising events drive learning by ...
This repository contains all (raw) data and code necessary to replicate the results reported in: Ric...
AbstractAssociative learning theory assumes that prediction error is a driving force in learning. A ...
Contains fulltext : 207343.pdf (publisher's version ) (Open Access)Perception and ...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
Prediction error ("surprise") affects the rate of learning: We learn more rapidly about cues for whi...
Predictive coding models suggest that predicted sensory signals are attenuated (silencing of predict...
Predictive coding models of perception suggest that predicted sensory signals are attenuated (silenc...
It has recently been suggested that learning signals in the amygdala might be best characterized by ...
Learning depends on surprise and is not engendered by predictable occurrences. In this functional ma...
The encoding of sensory information in the human brain is thought to be optimised by two principal p...
Contains fulltext : 218333.pdf (publisher's version ) (Open Access)Confronted with...
Confronted with a rich sensory environment, the brain must learn statistical regularities across sen...
Confronted with a rich sensory environment, the brain must learn statistical regularities across sen...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
One of the fundaments of associative learning theories is that surprising events drive learning by ...
This repository contains all (raw) data and code necessary to replicate the results reported in: Ric...
AbstractAssociative learning theory assumes that prediction error is a driving force in learning. A ...
Contains fulltext : 207343.pdf (publisher's version ) (Open Access)Perception and ...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
Prediction error ("surprise") affects the rate of learning: We learn more rapidly about cues for whi...
Predictive coding models suggest that predicted sensory signals are attenuated (silencing of predict...
Predictive coding models of perception suggest that predicted sensory signals are attenuated (silenc...
It has recently been suggested that learning signals in the amygdala might be best characterized by ...
Learning depends on surprise and is not engendered by predictable occurrences. In this functional ma...
The encoding of sensory information in the human brain is thought to be optimised by two principal p...