Human decisions are based on finite information, which makes them inherently imprecise. But what determines the degree of such imprecision? Here, we develop an efficient coding framework for higher-level cognitive processes in which information is represented by a finite number of discrete samples. We characterize the sampling process that maximizes perceptual accuracy or fitness under the often-adopted assumption that full adaptation to an environmental distribution is possible, and show how the optimal process differs when detailed information about the current contextual distribution is costly. We tested this theory on a numerosity discrimination task, and found that humans efficiently adapt to contextual distributions, but in the way pr...
When making decisions, animals must trade off the benefits of information harvesting against the opp...
Humans navigate daily decision-making by flexibly choosing appropriate approximations of what ought ...
It is assumed that human knowledge-building depends on a discrete sequential decision-making process...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...
Human performance on perceptual classification tasks approaches that of an ideal observer, but econo...
A good decision in isolation may be a bad decision in other conditions. Existing normative theories ...
Humans often seek information to minimize the pervasive effect of uncertainty on decisions. Current ...
In many learning or inference tasks human behavior approximates that of a Bayesian ideal observer, s...
Contemporary models of categorization typically tend to sidestep the problem of how information is i...
Information sampling is often biased towards seeking evidence that confirms one's prior beliefs. Des...
In the face of limited computational resources, bounded rational decision theory predicts that infor...
<div><p>Information sampling is often biased towards seeking evidence that confirms one’s prior beli...
Making decisions under uncertainty, from perceptual judgments to reward-guided choices, requires com...
IInformation sampling is often biased towards seeking evidence that confirms one's prior beliefs. De...
When making decisions, animals must trade off the benefits of information harvesting against the opp...
Humans navigate daily decision-making by flexibly choosing appropriate approximations of what ought ...
It is assumed that human knowledge-building depends on a discrete sequential decision-making process...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...
In many perceptual and cognitive decision-making problems, humans sample multiple noisy information ...
Human performance on perceptual classification tasks approaches that of an ideal observer, but econo...
A good decision in isolation may be a bad decision in other conditions. Existing normative theories ...
Humans often seek information to minimize the pervasive effect of uncertainty on decisions. Current ...
In many learning or inference tasks human behavior approximates that of a Bayesian ideal observer, s...
Contemporary models of categorization typically tend to sidestep the problem of how information is i...
Information sampling is often biased towards seeking evidence that confirms one's prior beliefs. Des...
In the face of limited computational resources, bounded rational decision theory predicts that infor...
<div><p>Information sampling is often biased towards seeking evidence that confirms one’s prior beli...
Making decisions under uncertainty, from perceptual judgments to reward-guided choices, requires com...
IInformation sampling is often biased towards seeking evidence that confirms one's prior beliefs. De...
When making decisions, animals must trade off the benefits of information harvesting against the opp...
Humans navigate daily decision-making by flexibly choosing appropriate approximations of what ought ...
It is assumed that human knowledge-building depends on a discrete sequential decision-making process...