Predictions provided by action-outcome probabilities entail a degree of (first-order) uncertainty. However, these probabilities themselves can be imprecise and embody second-order uncertainty. Tracking second-order uncertainty is important for optimal decision making and reinforcement learning. Previous functional magnetic resonance imaging investigations of second-order uncertainty in humans have drawn on an economic concept of ambiguity, where action-outcome associations in a gamble are either known (unambiguous) or completely unknown (ambiguous). Here, we relaxed the constraints associated with a purely categorical concept of ambiguity and varied the second-order uncertainty of gambles continuously, quantified as entropy over second-orde...
Studies on decision-making under uncertainty have mainly focused on understanding preferences for ei...
In economic decision making, outcomes are described in terms of risk (uncertain outcomes with certai...
Uncertainty presents a problem for both human and machine decision-making. While utility maximizatio...
Studies of decision making under uncertainty generally focus on imprecise information about outcome ...
2011 Fall.Includes bibliographical references.Previous studies have dissociated two types of uncerta...
SummaryPeople often prefer the known over the unknown, sometimes sacrificing potential rewards for t...
In this study, we examined the neural basis of decision making under different types of uncertainty ...
SummaryUncertainty is an inherent property of the environment and a central feature of models of dec...
This study examined the neural basis of decision-making under different types of uncertainty that in...
Much is known about how people make decisions under varying levels of probability (risk). Less is kn...
From the moment we wake up in the morning to the day's ebb when we settle in to sleep, we are bound ...
Risk and ambiguity are inherent in virtually all human decision-making. Risk refers to a situation i...
• We use a simple gambles design in an fMRI study to compare two conditions: ambiguity and conflict....
The acknowledged importance of uncertainty in economic decision making has stimulated the search for...
Studies on decision-making under uncertainty have mainly focused on understanding preferences for ei...
Studies on decision-making under uncertainty have mainly focused on understanding preferences for ei...
In economic decision making, outcomes are described in terms of risk (uncertain outcomes with certai...
Uncertainty presents a problem for both human and machine decision-making. While utility maximizatio...
Studies of decision making under uncertainty generally focus on imprecise information about outcome ...
2011 Fall.Includes bibliographical references.Previous studies have dissociated two types of uncerta...
SummaryPeople often prefer the known over the unknown, sometimes sacrificing potential rewards for t...
In this study, we examined the neural basis of decision making under different types of uncertainty ...
SummaryUncertainty is an inherent property of the environment and a central feature of models of dec...
This study examined the neural basis of decision-making under different types of uncertainty that in...
Much is known about how people make decisions under varying levels of probability (risk). Less is kn...
From the moment we wake up in the morning to the day's ebb when we settle in to sleep, we are bound ...
Risk and ambiguity are inherent in virtually all human decision-making. Risk refers to a situation i...
• We use a simple gambles design in an fMRI study to compare two conditions: ambiguity and conflict....
The acknowledged importance of uncertainty in economic decision making has stimulated the search for...
Studies on decision-making under uncertainty have mainly focused on understanding preferences for ei...
Studies on decision-making under uncertainty have mainly focused on understanding preferences for ei...
In economic decision making, outcomes are described in terms of risk (uncertain outcomes with certai...
Uncertainty presents a problem for both human and machine decision-making. While utility maximizatio...