Influential concepts in neuroscientific research cast the brain a predictive machine that revises its predictions when they are violated by sensory input. This relates to the predictive coding account of perception, but also to learning. Learning from prediction errors has been suggested for take place in the hippocampal memory system as well as in the basal ganglia. The present fMRI study used an action-observation paradigm to investigate the contributions of the hippocampus, caudate nucleus and midbrain dopaminergic system to different types of learning: learning in the absence of prediction errors, learning from prediction errors, and responding to the accumulation of prediction errors in unpredictable stimulus configurations. We conduct...
Perception can be cast as a process of inference, in which bottom-up signals are combined with top-d...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
Effective error-driven learning benefits from scaling of prediction errors to reward variability. Su...
The hippocampus is crucial for episodic memory, but it is also involved in online prediction. Eviden...
In Bayesian brain theories, hierarchically related prediction errors (PEs) play a central role for p...
The hippocampus is crucial for episodic memory, but it is also involved in online prediction. Eviden...
The present fMRI study investigated whether human observers spontaneously exploit the statistical st...
The present fMRI study investigated whether human observers spontaneously exploit the statistical st...
Predictions help guide learning. As we encounter objects in our environment, we make predictions abo...
occur simultaneously and unfold dynamically over time. For example, as people encounter objects in t...
Prediction-error signals consistent with formal models of “reinforcement learning” (RL) have repeate...
The encoding of sensory information in the human brain is thought to be optimised by two principal p...
The striatum has been established as a carrier of reward related prediction errors. This prediction ...
The encoding of sensory information in the human brain is thought to be optimised by two principal p...
Compared to our understanding of positive prediction error signals occurring due to unexpected rewar...
Perception can be cast as a process of inference, in which bottom-up signals are combined with top-d...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
Effective error-driven learning benefits from scaling of prediction errors to reward variability. Su...
The hippocampus is crucial for episodic memory, but it is also involved in online prediction. Eviden...
In Bayesian brain theories, hierarchically related prediction errors (PEs) play a central role for p...
The hippocampus is crucial for episodic memory, but it is also involved in online prediction. Eviden...
The present fMRI study investigated whether human observers spontaneously exploit the statistical st...
The present fMRI study investigated whether human observers spontaneously exploit the statistical st...
Predictions help guide learning. As we encounter objects in our environment, we make predictions abo...
occur simultaneously and unfold dynamically over time. For example, as people encounter objects in t...
Prediction-error signals consistent with formal models of “reinforcement learning” (RL) have repeate...
The encoding of sensory information in the human brain is thought to be optimised by two principal p...
The striatum has been established as a carrier of reward related prediction errors. This prediction ...
The encoding of sensory information in the human brain is thought to be optimised by two principal p...
Compared to our understanding of positive prediction error signals occurring due to unexpected rewar...
Perception can be cast as a process of inference, in which bottom-up signals are combined with top-d...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
Effective error-driven learning benefits from scaling of prediction errors to reward variability. Su...