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人类概率推理中的次优起源。

On the origins of suboptimality in human probabilistic inference.

机构信息

Institute of Perception, Action and Behaviour, School of Informatics, University of Edinburgh, Edinburgh, United Kingdom; Doctoral Training Centre in Neuroinformatics and Computational Neuroscience, School of Informatics, University of Edinburgh, Edinburgh, United Kingdom.

Institute of Perception, Action and Behaviour, School of Informatics, University of Edinburgh, Edinburgh, United Kingdom.

出版信息

PLoS Comput Biol. 2014 Jun 19;10(6):e1003661. doi: 10.1371/journal.pcbi.1003661. eCollection 2014 Jun.

Abstract

Humans have been shown to combine noisy sensory information with previous experience (priors), in qualitative and sometimes quantitative agreement with the statistically-optimal predictions of Bayesian integration. However, when the prior distribution becomes more complex than a simple Gaussian, such as skewed or bimodal, training takes much longer and performance appears suboptimal. It is unclear whether such suboptimality arises from an imprecise internal representation of the complex prior, or from additional constraints in performing probabilistic computations on complex distributions, even when accurately represented. Here we probe the sources of suboptimality in probabilistic inference using a novel estimation task in which subjects are exposed to an explicitly provided distribution, thereby removing the need to remember the prior. Subjects had to estimate the location of a target given a noisy cue and a visual representation of the prior probability density over locations, which changed on each trial. Different classes of priors were examined (Gaussian, unimodal, bimodal). Subjects' performance was in qualitative agreement with the predictions of Bayesian Decision Theory although generally suboptimal. The degree of suboptimality was modulated by statistical features of the priors but was largely independent of the class of the prior and level of noise in the cue, suggesting that suboptimality in dealing with complex statistical features, such as bimodality, may be due to a problem of acquiring the priors rather than computing with them. We performed a factorial model comparison across a large set of Bayesian observer models to identify additional sources of noise and suboptimality. Our analysis rejects several models of stochastic behavior, including probability matching and sample-averaging strategies. Instead we show that subjects' response variability was mainly driven by a combination of a noisy estimation of the parameters of the priors, and by variability in the decision process, which we represent as a noisy or stochastic posterior.

摘要

人类已经被证明可以将嘈杂的感官信息与先前的经验(先验)相结合,这在定性上有时与贝叶斯整合的统计最优预测一致。然而,当先验分布变得比简单的高斯分布更复杂时,例如偏斜或双峰分布,训练时间会更长,并且表现似乎不理想。目前还不清楚这种次优性是由于复杂先验的内部表示不准确,还是由于即使准确表示,在对复杂分布进行概率计算时存在额外的约束。在这里,我们使用一种新的估计任务来探究概率推断中的次优性的来源,在该任务中,受试者会接触到一个明确提供的分布,从而无需记住先验。受试者必须根据嘈杂的线索和位置先验概率密度的视觉表示来估计目标的位置,这些表示在每次试验中都会发生变化。我们研究了不同类型的先验(高斯、单峰、双峰)。尽管一般来说不太理想,但受试者的表现与贝叶斯决策理论的预测在定性上是一致的。次优性的程度受到先验的统计特征的调节,但在很大程度上独立于先验的类别和线索中的噪声水平,这表明在处理复杂的统计特征(如双峰分布)时的次优性可能是由于获取先验的问题,而不是计算它们的问题。我们在一组大型贝叶斯观测器模型中进行了因子模型比较,以确定其他噪声和次优性的来源。我们的分析否定了几种随机行为模型,包括概率匹配和样本平均策略。相反,我们表明,受试者的反应变异性主要是由对先验参数的噪声估计以及决策过程的变异性驱动的,我们将其表示为噪声或随机后验。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6df3/4063671/0f660af445d4/pcbi.1003661.g001.jpg

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