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使用环形扩散模型对连续结果颜色决策进行建模:度量和分类属性。

Modeling continuous outcome color decisions with the circular diffusion model: Metric and categorical properties.

机构信息

Melbourne School of Psychological Sciences.

Trinity College Institute of Neuroscience.

出版信息

Psychol Rev. 2020 Jul;127(4):562-590. doi: 10.1037/rev0000185. Epub 2020 Mar 9.

Abstract

The circular diffusion model is extended to provide a theory of the speed and accuracy of continuous outcome color decisions and used to characterize eye-movement decisions about the hues of noisy color patches in an isoluminant, equidiscriminability color space. Heavy-tailed distributions of decision outcomes were found with high levels of chromatic noise, similar to those found in visual working memory studies with high memory loads. Decision times were longer for less accurate decisions, in agreement with the slow error property typically found in difficult 2-choice tasks. Decision times were shorter, and responses were more accurate in parts of the space corresponding to nameable color categories, although the number and locations of the categories varied among participants. We show that these findings can be predicted by a theory of across-trial variability in the quality of the evidence entering the decision process, represented mathematically by the drift rate of the diffusion process. The heavy-tailed distributions of decision outcomes and the slow-error pattern can be predicted by either of 2 models of drift rate. One model is based on encoding failures and the other is based on a nonlinear transformation of the stimulus space. Both models predict highly inaccurate stimulus representations on some trials, leading to heavy-tailed distributions and slow errors. The color-category effects were successfully modeled as stimulus biases in a similarity-choice framework, in which the drift rate is the vector sum of the encoded metric and categorical representations of the stimulus. (PsycInfo Database Record (c) 2020 APA, all rights reserved).

摘要

循环扩散模型得到扩展,为连续结果颜色判断的速度和准确性提供了一种理论,并用于描述在等明度、等可辨别性颜色空间中,对噪声颜色斑块色调的眼动决策。在高色噪声水平下,发现了决策结果的重尾分布,类似于在高记忆负荷的视觉工作记忆研究中发现的分布。对于准确性较低的决策,决策时间较长,这与在困难的 2 选择任务中通常发现的慢错误特性一致。在与可命名颜色类别对应的空间部分,决策时间更短,响应更准确,尽管参与者之间类别数量和位置有所不同。我们表明,这些发现可以通过一种关于决策过程中证据质量在试验间变化的理论来预测,该理论在数学上由扩散过程的漂移率来表示。决策结果的重尾分布和慢错误模式可以由漂移率的 2 个模型中的任何一个来预测。一个模型基于编码失败,另一个基于刺激空间的非线性变换。这两个模型都预测了一些试验中高度不准确的刺激表示,导致重尾分布和慢错误。颜色类别效应成功地建模为相似性选择框架中的刺激偏差,其中漂移率是刺激编码度量和类别表示的向量和。(PsycInfo 数据库记录(c)2020 APA,保留所有权利)。

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