In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, people are typically too predictable. We argue that these apparently contrasting observations have the same origin: the operation of a general-purpose local sampling algorithm for probabilistic inference. This account makes distinctive predictions regarding random sequence generation, not predicted by previous accounts—which suggests that randomness is produced by inhibition of habitual behavior, striving for unpredictability. We verify these predictions in two experiments: people show the same deviations from randomness when randomly generating from non-uniform or recently-learned distributions. In addition, our data show a novel signature beha...
People are often biased in their perception of randomness in that they tend to see patterns in rando...
Human randomness perception is commonly described as biased. This is because when generating random ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
Many models of cognition assume that people can generate independent samples, yet people fail to do ...
Many models of cognition assume that people can generate independent samples, yet people fail to do ...
The environment is inherently noisy, with regularities and randomness. Therefore, the challenge for ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
People are often biased in their perception of randomness in that they tend to see patterns in rando...
Human randomness perception is commonly described as biased. This is because when generating random ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
In many tasks, human behavior is far noisier than is optimal. Yet when asked to behave randomly, peo...
Many models of cognition assume that people can generate independent samples, yet people fail to do ...
Many models of cognition assume that people can generate independent samples, yet people fail to do ...
The environment is inherently noisy, with regularities and randomness. Therefore, the challenge for ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
People are often biased in their perception of randomness in that they tend to see patterns in rando...
Human randomness perception is commonly described as biased. This is because when generating random ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...