In a companion paper [1], we have presented a generic approach for inferring how subjects make optimal decisions under uncertainty. From a Bayesian decision theoretic perspective, uncertain representations correspond to ‘‘posterior’’ beliefs, which result from integrating (sensory) information with subjective ‘‘prior’’ beliefs. Preferences and goals are encoded through a ‘‘loss’’ (or ‘‘utility’’) function, which measures the cost incurred by making any admissible decision for any given (hidden or unknown) state of the world. By assuming that subjects make optimal decisions on the basis of updated (posterior) beliefs and utility (loss) functions, one can evaluate the likelihood of observed behaviour. In this paper, we describe a concrete imp...
We argue that Bayesian decision theory provides a good theoretical framework for visual perception. ...
Economists and psychologists have recently been developing new theories of decision making under unc...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...
In a companion paper [1], we have presented a generic approach for inferring how subjects make optim...
In a companion paper [1], we have presented a generic approach for inferring how subjects make optim...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
Contains fulltext : 87216.pdf (publisher's version ) (Open Access)In this paper, w...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
Mathematical decision making theory has been successfully applied to the neuroscience of sensation, ...
Thesis (Ph.D.)--University of Washington, 2021Existing computational models of decision making are o...
An important use of machine learning is to learn what people value. What posts or photos should a us...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...
We argue that Bayesian decision theory provides a good theoretical framework for visual perception. ...
Economists and psychologists have recently been developing new theories of decision making under unc...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...
In a companion paper [1], we have presented a generic approach for inferring how subjects make optim...
In a companion paper [1], we have presented a generic approach for inferring how subjects make optim...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
Contains fulltext : 87216.pdf (publisher's version ) (Open Access)In this paper, w...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
In this paper, we present a generic approach that can be used to infer how subjects make optimal dec...
Mathematical decision making theory has been successfully applied to the neuroscience of sensation, ...
Thesis (Ph.D.)--University of Washington, 2021Existing computational models of decision making are o...
An important use of machine learning is to learn what people value. What posts or photos should a us...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...
We argue that Bayesian decision theory provides a good theoretical framework for visual perception. ...
Economists and psychologists have recently been developing new theories of decision making under unc...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...