School of Computer Science and Informatics, University College Dublin.
Department of Theoretical Physics, National University of Ireland.
Top Cogn Sci. 2018 Jan;10(1):192-208. doi: 10.1111/tops.12319.
We describe a computational model of two central aspects of people's probabilistic reasoning: descriptive probability estimation and inferential probability judgment. This model assumes that people's reasoning follows standard frequentist probability theory, but it is subject to random noise. This random noise has a regressive effect in descriptive probability estimation, moving probability estimates away from normative probabilities and toward the center of the probability scale. This random noise has an anti-regressive effect in inferential judgement, however. These regressive and anti-regressive effects explain various reliable and systematic biases seen in people's descriptive probability estimation and inferential probability judgment. This model predicts that these contrary effects will tend to cancel out in tasks that involve both descriptive estimation and inferential judgement, leading to unbiased responses in those tasks. We test this model by applying it to one such task, described by Gallistel et al. ). Participants' median responses in this task were unbiased, agreeing with normative probability theory over the full range of responses. Our model captures the pattern of unbiased responses in this task, while simultaneously explaining systematic biases away from normatively correct probabilities seen in other tasks.
描述性概率估计和推理概率判断。该模型假设人们的推理遵循标准的频率概率理论,但受到随机噪声的影响。这种随机噪声在描述性概率估计中具有回归效应,使概率估计偏离规范概率,向概率尺度的中心移动。然而,这种随机噪声在推理判断中具有反回归效应。这些回归和反回归效应解释了人们在描述性概率估计和推理概率判断中观察到的各种可靠和系统的偏差。该模型预测,这些相反的效应在涉及描述性估计和推理判断的任务中往往会相互抵消,导致这些任务中出现无偏差的反应。我们通过将其应用于 Gallistel 等人描述的这样一个任务来检验该模型。参与者在这个任务中的中位数反应是无偏差的,在整个反应范围内与规范概率理论一致。我们的模型捕捉到了这个任务中无偏差反应的模式,同时解释了在其他任务中偏离规范正确概率的系统偏差。