自然图像统计的先验信息为感知决策提供了信心。

IF 2.1 3区 心理学 Q2 PSYCHOLOGY, EXPERIMENTAL
Rebecca K. West , Emily J. A-Izzeddin , David K. Sewell , William J. Harrison
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引用次数: 0

摘要

决策自信对于人类在嘈杂的感知世界中做出适应性决策的能力起着至关重要的作用。尽管它很重要,但目前关于感知决策中置信度判断的计算几乎没有共识。为了更好地理解这些机制,我们研究了自然先验分布对置信度的影响程度。与之前的研究相反,我们没有要求参与者内化任意先验分布的参数。相反,我们使用了一种新的心理物理范式,利用自然场景中低级图像特征的概率分布,这些特征众所周知会影响感知。参与者报告了对自然图像斑块和目标的主观直立,然后报告了他们对定向反应的信心。我们使用计算模型将目标中低级特征的统计数据与这些特征在许多自然图像中的平均分布联系起来,这是先验的。我们的研究结果表明,参与者的感知和重要的是,他们的信心判断与图像统计的内化先验一致。总的来说,我们的研究强调了自然任务设计的重要性,它利用现有的、长期的先验来进一步理解置信度的计算基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Priors for natural image statistics inform confidence in perceptual decisions
Decision confidence plays a critical role in humans’ ability to make adaptive decisions in a noisy perceptual world. Despite its importance, there is currently little consensus about the computations underlying confidence judgements in perceptual decisions. To better understand these mechanisms, we addressed the extent to which confidence is informed by a naturalistic prior distribution. Contrary to previous research, we did not require participants to internalise parameters of an arbitrary prior distribution. We instead used a novel psychophysical paradigm leveraging probability distributions of low-level image features in natural scenes, which are well-known to influence perception. Participants reported the subjective upright of naturalistic image patches, targets, and then reported their confidence in their orientation responses. We used computational modelling to relate the statistics of the low-level features in the targets to the average distribution of these features across many naturalistic images, a prior. Our results showed that participants’ perceptual and importantly, their confidence judgments aligned with an internalised prior for image statistics. Overall, our study highlights the importance of naturalistic task designs that capitalise on existing, long-term priors to further understand the computational basis of confidence.
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来源期刊
Consciousness and Cognition
Consciousness and Cognition PSYCHOLOGY, EXPERIMENTAL-
CiteScore
4.30
自引率
8.30%
发文量
123
期刊介绍: Consciousness and Cognition: An International Journal provides a forum for a natural-science approach to the issues of consciousness, voluntary control, and self. The journal features empirical research (in the form of regular articles and short reports) and theoretical articles. Integrative theoretical and critical literature reviews, and tutorial reviews are also published. The journal aims to be both scientifically rigorous and open to novel contributions.
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