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A note on decomposition of sources of variability in perceptual decision-making

机译:有关感知决策中变异源的分解的备注

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Information processing underlying human perceptual decision-making is inherently noisy and identifying sources of this noise is important to understand processing. Ratcliff, Voskuilen, and McKoon (2018) examined results from five experiments using a double-pass procedure in which stimuli were repeated typically a hundred trials later. Greater than chance agreement between repeated tests provided evidence for trial-to-trial variability from external sources of noise. They applied the diffusion model to estimate the quality of evidence driving the decision process (drift rate) and the variability (standard deviation) in drift rate across trials. This variability can be decomposed into random (internal) and systematic (external) components by comparing the double-pass accuracy and agreement with the model predictions. In this note, we provide an additional analysis of the double-pass experiments using the linear ballistic accumulator (LBA) model. The LBA model does not have within-trial variability and thus it captures all variabilities in processing with its across-trial variability parameters. The LBA analysis of the double-pass data provides model-based evidence of external variability in a decision process, which is consistent with Ratcliff et al.'s result. This demonstrates that across-trial variability is required to model perceptual decision-making. The LBA model provides measures of systematic and random variability as the diffusion model did. But due to the lack of within-trial variability, the LBA model estimated the random component as a larger proportion of across-trial total variability than did the diffusion model. (c) 2020 Elsevier Inc. All rights reserved.
机译:人类感知决策的信息处理本质上是有噪声的,识别这种噪声的来源对于理解信息处理非常重要。Ratcliff、Voskuilen和McKoon(2018)研究了五个实验的结果,这些实验采用了双程程序,通常在100次试验后重复刺激。重复试验之间的一致性大于偶然性,这为外部噪声源的试验间可变性提供了证据。他们应用扩散模型来估计驱动决策过程的证据质量(漂移率)和试验漂移率的可变性(标准偏差)。通过比较双通精度以及与模型预测的一致性,可以将这种可变性分解为随机(内部)和系统(外部)成分。在本文中,我们使用线性弹道累加器(LBA)模型对双程实验进行了额外的分析。LBA模型没有试验内变异性,因此它利用试验间变异性参数捕获了处理过程中的所有变异性。双通道数据的LBA分析为决策过程中的外部变化提供了基于模型的证据,这与Ratcliff等人的结果一致。这表明,在对知觉决策进行建模时,需要跨试验的可变性。与扩散模型一样,LBA模型提供了系统和随机可变性的度量。但由于缺乏试验内变异性,LBA模型估计随机成分在整个试验总变异性中所占的比例高于扩散模型。(c) 2020爱思唯尔公司版权所有。

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