Average human behavior in cue combination tasks is well predicted by bayesian inference models. As this capability is acquired over developmental timescales, the question arises, how it is learned. Here we investigated whether reward dependent learning, that is well established at the computational, behavioral, and neuronal levels, could contribute to this development. It is shown that a model free reinforcement learning algorithm can indeed learn to do cue integration, i.e. weight uncertain cues according to their respective reliabilities and even do so if reliabilities are changing. We also consider the case of causal inference where multimodal signals can originate from one or multiple separate objects and should not always be integrated...
Two key research issues in the field of causal learning are how people acquire causal knowledge when...
shown that pretraining with unrelated cues can dramatically influence the performance of humans in a...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Average human behavior in cue combination tasks is well predicted by Bayesian inference models. As t...
Abstract—Bayesian inference techniques have been used to understand the performance of human subject...
Perception and action are the result of an integration of various sources of information, such as cu...
This chapter reviews the diverse roles that causal knowledge plays in reinforcement learning. The fi...
Learning is often understood as an organism's gradual acquisition of the association between a given...
SummaryWhen an organism receives a reward, it is crucial to know which of many candidate actions cau...
In a multisensory task, human adults integrate information from different sensory modalities--behavi...
Learning is often understood as an organism's gradual acquisition of the association between a given...
When an organism receives a reward, it is crucial to know which of many candidate actions caused thi...
When an organism receives a reward, it is crucial to know which of many candidate actions caused thi...
In a multisensory task, human adults integrate information from different sensory modalities-behavio...
Previous studies have shown that sensorimotor processing can often be described by Bayesian learning...
Two key research issues in the field of causal learning are how people acquire causal knowledge when...
shown that pretraining with unrelated cues can dramatically influence the performance of humans in a...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Average human behavior in cue combination tasks is well predicted by Bayesian inference models. As t...
Abstract—Bayesian inference techniques have been used to understand the performance of human subject...
Perception and action are the result of an integration of various sources of information, such as cu...
This chapter reviews the diverse roles that causal knowledge plays in reinforcement learning. The fi...
Learning is often understood as an organism's gradual acquisition of the association between a given...
SummaryWhen an organism receives a reward, it is crucial to know which of many candidate actions cau...
In a multisensory task, human adults integrate information from different sensory modalities--behavi...
Learning is often understood as an organism's gradual acquisition of the association between a given...
When an organism receives a reward, it is crucial to know which of many candidate actions caused thi...
When an organism receives a reward, it is crucial to know which of many candidate actions caused thi...
In a multisensory task, human adults integrate information from different sensory modalities-behavio...
Previous studies have shown that sensorimotor processing can often be described by Bayesian learning...
Two key research issues in the field of causal learning are how people acquire causal knowledge when...
shown that pretraining with unrelated cues can dramatically influence the performance of humans in a...
Computational models of learning have proved largely successful in characterizing potential mechanis...