Reward properties of stimuli can undergo sudden changes, and the detection of these 'reversals' is often made difficult by the probabilistic nature of rewards/punishments. Here we tested whether and how humans use social information (someone else's choices) to overcome uncertainty during reversal learning. We show a substantial social influence during reversal learning, which was modulated by the type of observed behavior. Participants frequently followed observed conservative choices (no switches after punishment) made by the (fictitious) other player but ignored impulsive choices (switches), even though the experiment was set up so that both types of response behavior would be similarly beneficial/detrimental (Study 1). Computational mode...
The present study is a simulation study. We theoretically tested a newly developed probabilistic rew...
The mechanisms that govern human learning and decision making under uncertainty have been the focus ...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Reward properties of stimuli can undergo sudden changes, and the detection of these 'reversals' is o...
AbstractReward properties of stimuli can undergo sudden changes, and the detection of these ‘reversa...
Reward properties of stimuli can undergo sudden changes, and the detection of these ‘reversals’ is o...
Reward properties of stimuli can undergo sudden changes, and the detection of these 'reversals' is o...
The valence of new information influences learning rates in humans: good news tends to receive more ...
Computational models of learning have proved largely successful in characterizing potential mechanis...
While there is no doubt that social signals affect human reinforcement learning, there is still no c...
Reversal learning paradigms are widely used assays of behavioral flexibility with their probabilisti...
While there is no doubt that social signals affect human reinforcement learning, there is still no c...
We study social learning in a continuous action space experiment. Subjects, acting in sequence, stat...
Why do people sometimes hold unjustified beliefs and make harmful choices? Three hypotheses include ...
To decide optimally between available options, organisms need to learn the values associated with th...
The present study is a simulation study. We theoretically tested a newly developed probabilistic rew...
The mechanisms that govern human learning and decision making under uncertainty have been the focus ...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Reward properties of stimuli can undergo sudden changes, and the detection of these 'reversals' is o...
AbstractReward properties of stimuli can undergo sudden changes, and the detection of these ‘reversa...
Reward properties of stimuli can undergo sudden changes, and the detection of these ‘reversals’ is o...
Reward properties of stimuli can undergo sudden changes, and the detection of these 'reversals' is o...
The valence of new information influences learning rates in humans: good news tends to receive more ...
Computational models of learning have proved largely successful in characterizing potential mechanis...
While there is no doubt that social signals affect human reinforcement learning, there is still no c...
Reversal learning paradigms are widely used assays of behavioral flexibility with their probabilisti...
While there is no doubt that social signals affect human reinforcement learning, there is still no c...
We study social learning in a continuous action space experiment. Subjects, acting in sequence, stat...
Why do people sometimes hold unjustified beliefs and make harmful choices? Three hypotheses include ...
To decide optimally between available options, organisms need to learn the values associated with th...
The present study is a simulation study. We theoretically tested a newly developed probabilistic rew...
The mechanisms that govern human learning and decision making under uncertainty have been the focus ...
Computational models of learning have proved largely successful in characterizing potential mechanis...