Reinforcement learning tasks are often used to assess participants' tendency to learn more from the positive or more from the negative consequences of one's action. However, this assessment often requires comparison in learning performance across different task conditions, which may differ in the relative salience or discriminability of the stimuli associated with more and less rewarding outcomes, respectively. To address this issue, in a first set of studies, participants were subjected to two versions of a common probabilistic learning task. The two versions differed with respect to the stimulus (Hiragana) characters associated with reward probability. The assignment of character to reward probability was fixed within version but reversed...
Event-related potentials that follow feedback in reinforcement learning tasks have been proposed to ...
The ability to make optimal decisions depends on evaluating the expected rewards associated with dif...
In reinforcement learning (RL), an agent makes sequential decisions to maximise the reward it can ob...
Reinforcement learning tasks are often used to assess participants' tendency to learn more from the ...
Reinforcement learning tasks are often used to assess participants' tendency to learn more from the ...
Reinforcement learning tasks are often used to assess participants' tendency to learn more from the ...
<p>The figure displays accuracy (choosing the most rewarded stimulus) for each of the three Hiragana...
<p>Each pair of stimuli was randomly presented in separate trials. During each trial participants ch...
The goal of temporal difference (TD) reinforcement learning is to maximize outcomes and improve futu...
Reversal learning paradigms are widely used assays of behavioral flexibility with their probabilisti...
Studies of reinforcement learning have shown that humans learn differently in response to positive a...
Abstract Studies of reinforcement learning have shown that humans learn differently in response to p...
When making repeated decisions, individuals can learn about associations between actions and outcome...
Previous research has shown that trial ordering affects cognitive performance, but this has not been...
Publisher's PDFHumans are capable of detecting and exploiting a variety of environmental regularitie...
Event-related potentials that follow feedback in reinforcement learning tasks have been proposed to ...
The ability to make optimal decisions depends on evaluating the expected rewards associated with dif...
In reinforcement learning (RL), an agent makes sequential decisions to maximise the reward it can ob...
Reinforcement learning tasks are often used to assess participants' tendency to learn more from the ...
Reinforcement learning tasks are often used to assess participants' tendency to learn more from the ...
Reinforcement learning tasks are often used to assess participants' tendency to learn more from the ...
<p>The figure displays accuracy (choosing the most rewarded stimulus) for each of the three Hiragana...
<p>Each pair of stimuli was randomly presented in separate trials. During each trial participants ch...
The goal of temporal difference (TD) reinforcement learning is to maximize outcomes and improve futu...
Reversal learning paradigms are widely used assays of behavioral flexibility with their probabilisti...
Studies of reinforcement learning have shown that humans learn differently in response to positive a...
Abstract Studies of reinforcement learning have shown that humans learn differently in response to p...
When making repeated decisions, individuals can learn about associations between actions and outcome...
Previous research has shown that trial ordering affects cognitive performance, but this has not been...
Publisher's PDFHumans are capable of detecting and exploiting a variety of environmental regularitie...
Event-related potentials that follow feedback in reinforcement learning tasks have been proposed to ...
The ability to make optimal decisions depends on evaluating the expected rewards associated with dif...
In reinforcement learning (RL), an agent makes sequential decisions to maximise the reward it can ob...