Decision making often requires simultaneously learning about and combining evidence from various sources of information. However, when making inferences from these sources, humans show systematic biases that are often attributed to heuristics or limitations in cognitive processes. Here we use a combination of experimental and modelling approaches to reveal neural substrates of probabilistic inference and corresponding biases. We find systematic deviations from normative accounts of inference when alternative options are not equally rewarding; subjects\u27 choice behaviour is biased towards the more rewarding option, whereas their inferences about individual cues show the opposite bias. Moreover, inference bias about combinations of cues dep...
Decision bias is traditionally conceptualized as an internal reference against which sensory evidenc...
Thesis (Ph. D.)--University of Rochester. Dept. of Brain and Cognitive Sciences, 2010.What are the c...
Optimal decision making in complex environments requires dynamic learning from unexpected events. To...
Decision making often requires simultaneously learning about and combining evidence from various sou...
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
In perceptual decision-making, advance knowledge biases people toward choice alternatives that are m...
Prior information biases the decision process: actions consistent with prior information are execute...
Prior information biases the decision process: actions consistent with prior information are execute...
Much experimental evidence suggests that during decision making neural circuits accumulate evidence ...
Recently, there have been growing behavioral evidence that the brain encodes sensory information in ...
Our visual world is full of ambiguous sensory signals, from which we have to extract relevant and me...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...
Reward probability crucially determines the value of outcomes. A basic phenomenon, defying explanati...
Decision bias is traditionally conceptualized as an internal reference against which sensory evidenc...
Decision bias is traditionally conceptualized as an internal reference against which sensory evidenc...
Thesis (Ph. D.)--University of Rochester. Dept. of Brain and Cognitive Sciences, 2010.What are the c...
Optimal decision making in complex environments requires dynamic learning from unexpected events. To...
Decision making often requires simultaneously learning about and combining evidence from various sou...
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
We propose that synapses may be the workhorse of the neuronal computations that underlie probabilist...
In perceptual decision-making, advance knowledge biases people toward choice alternatives that are m...
Prior information biases the decision process: actions consistent with prior information are execute...
Prior information biases the decision process: actions consistent with prior information are execute...
Much experimental evidence suggests that during decision making neural circuits accumulate evidence ...
Recently, there have been growing behavioral evidence that the brain encodes sensory information in ...
Our visual world is full of ambiguous sensory signals, from which we have to extract relevant and me...
Perception is often characterized as an inference process in which the brain unconsciously reasons a...
Reward probability crucially determines the value of outcomes. A basic phenomenon, defying explanati...
Decision bias is traditionally conceptualized as an internal reference against which sensory evidenc...
Decision bias is traditionally conceptualized as an internal reference against which sensory evidenc...
Thesis (Ph. D.)--University of Rochester. Dept. of Brain and Cognitive Sciences, 2010.What are the c...
Optimal decision making in complex environments requires dynamic learning from unexpected events. To...