School of Psychological and Cognitive Sciences and Beijing Key Laboratory of Behavior and Mental Health, Peking University, Beijing, China.
PKU-IDG/McGovern Institute for Brain Research, Peking University, Beijing, China.
PLoS Comput Biol. 2019 May 14;15(5):e1007047. doi: 10.1371/journal.pcbi.1007047. eCollection 2019 May.
Behavioral and neuroimaging evidence shows that human decisions are sensitive to the statistical regularities (mean, variance, skewness, etc.) of reward distributions. However, it is unclear what representations human observers form to approximate reward distributions, or probability distributions in general. When the possible values of a probability distribution are numerous, it is cognitively costly and perhaps unrealistic to maintain in mind the probability of each possible value. Here we propose a Clusters of Samples (CoS) representation model: The samples of the to-be-represented distribution are classified into a small number of clusters and only the centroids and relative weights of the clusters are retained for future use. We tested the behavioral relevance of CoS in four experiments. On each trial, human subjects reported the mean and mode of a sequentially presented multimodal distribution of spatial positions or orientations. By varying the global and local features of the distributions, we observed systematic errors in the reported mean and mode. We found that our CoS representation of probability distributions outperformed alternative models in accounting for subjects' response patterns. The ostensible influence of positive/negative skewness on the over/under estimation of the reported mean, analogous to the "skewness preference" phenomenon in decisions, could be well explained by models based on CoS.
行为和神经影像学证据表明,人类决策对奖励分布的统计规律(均值、方差、偏度等)敏感。然而,目前尚不清楚人类观察者形成何种表示形式来近似奖励分布或一般概率分布。当概率分布的可能值众多时,在脑海中记住每个可能值的概率在认知上是昂贵的,也许是不现实的。在这里,我们提出了一种样本聚类(CoS)表示模型:将待表示分布的样本分为少数几个簇,仅保留簇的质心和相对权重以备将来使用。我们在四个实验中测试了 CoS 在行为上的相关性。在每次试验中,人类受试者报告了顺序呈现的空间位置或方向的多峰分布的均值和众数。通过改变分布的全局和局部特征,我们观察到报告的均值和众数存在系统误差。我们发现,我们对概率分布的 CoS 表示在解释受试者的反应模式方面优于其他模型。报告均值的过高/过低估计与“偏好正/负偏度”现象在决策中的类似,这种现象的明显影响可以很好地用基于 CoS 的模型来解释。