Learning how to reach a reward over long series of actions is a remarkable capability of humans, and potentially guided by multiple parallel learning modules. Current brain imaging of learning modules is limited by (i) simple experimental paradigms, (ii) entanglement of brain signals of different learning modules, and (iii) a limited number of computational models considered as candidates for explaining behavior. Here, we address these three limitations and (i) introduce a complex sequential decision making task with surprising events that allows us to (ii) dissociate correlates of reward prediction errors from those of surprise in functional magnetic resonance imaging (fMRI); and (iii) we test behavior against a large repertoire of model-f...
r r Abstract: Surprise drives learning. Various neural “prediction error ” signals are believed to u...
Surprise drives learning. Various neural “prediction error” signals are believed to underpin surpris...
Learning theorists posit two reinforcement learning systems: model-free and model-based. Model-based...
Learning how to reach a reward over long series of actions is a remarkable capability of humans, and...
Prediction-error signals consistent with formal models of "reinforcement learning" (RL) have repeate...
Reinforcement learning (RL) provides a framework involving two diverse approaches to reward-based de...
Prediction-error signals consistent with formal models of “reinforcement learning” (RL) have repeate...
Reinforcement learning (RL) uses sequential experience with situations (“states”) and outcomes to as...
SummaryReinforcement learning (RL) uses sequential experience with situations (“states”) and outcome...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Learning occurs when an outcome deviates from expectation (prediction error). According to formal le...
In reinforcement learning (RL), an agent makes sequential decisions to maximise the reward it can ob...
Reinforcement learning describes motivated behavior in terms of two abstract signals. The representa...
Reinforcement learning (RL) uses sequential experience with situations (“states”) and outcomes to as...
r r Abstract: Surprise drives learning. Various neural “prediction error ” signals are believed to u...
Surprise drives learning. Various neural “prediction error” signals are believed to underpin surpris...
Learning theorists posit two reinforcement learning systems: model-free and model-based. Model-based...
Learning how to reach a reward over long series of actions is a remarkable capability of humans, and...
Prediction-error signals consistent with formal models of "reinforcement learning" (RL) have repeate...
Reinforcement learning (RL) provides a framework involving two diverse approaches to reward-based de...
Prediction-error signals consistent with formal models of “reinforcement learning” (RL) have repeate...
Reinforcement learning (RL) uses sequential experience with situations (“states”) and outcomes to as...
SummaryReinforcement learning (RL) uses sequential experience with situations (“states”) and outcome...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Learning occurs when an outcome deviates from expectation (prediction error). According to formal le...
In reinforcement learning (RL), an agent makes sequential decisions to maximise the reward it can ob...
Reinforcement learning describes motivated behavior in terms of two abstract signals. The representa...
Reinforcement learning (RL) uses sequential experience with situations (“states”) and outcomes to as...
r r Abstract: Surprise drives learning. Various neural “prediction error ” signals are believed to u...
Surprise drives learning. Various neural “prediction error” signals are believed to underpin surpris...
Learning theorists posit two reinforcement learning systems: model-free and model-based. Model-based...