动作控制任务中对环境统计的适应

Nils Neupärtl, C. Rothkopf
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摘要

尽管人类容易产生知觉错觉和决策偏差,但他们在各种困难和复杂的日常任务中表现得非常好。研究表明,人类是学会适应环境的统计规律的。然而,人类是否对这些普通过程有正确的物理直觉,并在适当的内部模型中反映相关动态,一直存在争议。最近的研究表明,在考虑感官不确定性的情况下,人类在各种物理判断任务中的行为确实可以用基于现实牛顿函数的概率模型来解释。在这里,我们研究了人类是否在控制任务中使用环境的物理模型,这涉及到所涉及的动力学中的非线性。参与者被要求将冰球射向一个受到实际摩擦影响的目标区域。通过运用贝叶斯模型,我们可以证明人类有能力适应这些物理关系,并对相关数量有适当的内在信念。
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Adaptation to environmental statistics in an action control task
Although humans are prone to perceptual illusions and decision biases, they perform very well in every-day tasks with varying difficulties and complexities. It has been shown that humans learn to adopt to the statistical regularities of the environment. However, whether humans have correct physical intuitions about these ordinary processes and reflect related dynamics in an appropriate internal model has been disputed. Recent studies have shown that human behavior in diverse physical judgment tasks can indeed be explained with probabilistic models based on realistic, Newtonian functions while considering sensory uncertainties. Here, we examined whether humans use physical models of their environment in a control task, which involves non-linearities in the involved dynamics. Participants were asked to shoot a puck into a target area affected by realistic friction. By deploying Bayesian models we can show that humans are capable to adopt to these physical relationships and have appropriate internal beliefs about relevant quantities.
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