In this paper, we present a generic approach that can be used to infer how subjects make optimal decisions under uncertainty. This approach induces a distinction between a subject's perceptual model, which underlies the representation of a hidden "state of affairs" and a response model, which predicts the ensuing behavioural (or neurophysiological) responses to those inputs. We start with the premise that subjects continuously update a probabilistic representation of the causes of their sensory inputs to optimise their behaviour. In addition, subjects have preferences or goals that guide decisions about actions given the above uncertain representation of these hidden causes or state of affairs. From a Bayesian decision theoretic perspective...
AbstractStatistical decision theory (SDT) and Bayesian decision theory (BDT) are closely related mat...
We argue that Bayesian decision theory provides a good theoretical framework for visual perception. ...
Thesis (Ph.D.)--University of Washington, 2021Existing computational models of decision making are o...
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 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...
Decision making is a core competence for animals and humans acting and surviving in environments the...
Mathematical decision making theory has been successfully applied to the neuroscience of sensation, ...
Even for simple perceptual decisions, the mechanisms that the brain employs are still under debate. ...
Why are you reading this abstract? In some sense, your answer will cast the exercise as valuable—but...
We provide a characterisation of choice behaviour generated by a Bayesian expected utility maximiser...
We live in an uncertain world, and each decision may have many possible outcomes; choosing the best ...
AbstractStatistical decision theory (SDT) and Bayesian decision theory (BDT) are closely related mat...
We argue that Bayesian decision theory provides a good theoretical framework for visual perception. ...
Thesis (Ph.D.)--University of Washington, 2021Existing computational models of decision making are o...
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 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...
Decision making is a core competence for animals and humans acting and surviving in environments the...
Mathematical decision making theory has been successfully applied to the neuroscience of sensation, ...
Even for simple perceptual decisions, the mechanisms that the brain employs are still under debate. ...
Why are you reading this abstract? In some sense, your answer will cast the exercise as valuable—but...
We provide a characterisation of choice behaviour generated by a Bayesian expected utility maximiser...
We live in an uncertain world, and each decision may have many possible outcomes; choosing the best ...
AbstractStatistical decision theory (SDT) and Bayesian decision theory (BDT) are closely related mat...
We argue that Bayesian decision theory provides a good theoretical framework for visual perception. ...
Thesis (Ph.D.)--University of Washington, 2021Existing computational models of decision making are o...