Computational models of learning have proved largely successful in characterizing potential mechanisms which allow humans to make decisions in uncertain and volatile contexts. We report here findings that extend existing knowledge and show that a modified reinforcement learning model, which has separate parameters according to whether the previous trial gave a reward or a punishment, can provide the best fit to human behavior in decision making under uncertainty. More specifically, we examined the fit of our modified reinforcement learning model to human behavioral data in a probabilistic two-alternative decision making task with rule reversals. Our results demonstrate that this model predicted human behavior better than a series of other m...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
To decide optimally between available options, organisms need to learn the values associated with th...
Animals and humans often have to choose between options with reward distributions that are initially...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterising potentialmechanism...
Two prominent types of uncertainty that have been studied extensively are expected and unexpected un...
This thesis investigates mechanisms of human decision making, building on the fields of psychology a...
Individuals use their cognitive abilities to make decisions, with the ultimate goal of improving the...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
How to compute initially unknown reward values makes up one of the key problems in reinforcement lea...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
To decide optimally between available options, organisms need to learn the values associated with th...
Animals and humans often have to choose between options with reward distributions that are initially...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Computational models of learning have proved largely successful in characterising potentialmechanism...
Two prominent types of uncertainty that have been studied extensively are expected and unexpected un...
This thesis investigates mechanisms of human decision making, building on the fields of psychology a...
Individuals use their cognitive abilities to make decisions, with the ultimate goal of improving the...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
How to compute initially unknown reward values makes up one of the key problems in reinforcement lea...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
To decide optimally between available options, organisms need to learn the values associated with th...
Animals and humans often have to choose between options with reward distributions that are initially...