Variance (un)explained: Experimental conditions and temporal dependencies explain similarly small proportions of reaction time variability in linear models of perceptual and cognitive tasks.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Marlou Nadine Perquin, Tobias Heed, Christoph Kayser
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引用次数: 0

Abstract

Any series of sensorimotor actions shows fluctuations in speed and accuracy from repetition to repetition, even when the sensory input and motor output requirements remain identical over time. Such fluctuations are particularly prominent in reaction time (RT) series from laboratory neurocognitive tasks. Despite their omnipresent nature, trial-to-trial fluctuations remain poorly understood. Here, we systematically analyzed RT series from various neurocognitive tasks, quantifying how much of the total trial-to-trial RT variance can be explained with general linear models (GLMs) by three sources of variability that are frequently investigated in behavioral and neuroscientific research: (1) experimental conditions, employed to induce systematic patterns in variability, (2) short-term temporal dependencies such as the autocorrelation between subsequent trials, and (3) long-term temporal trends over experimental blocks and sessions. Furthermore, we examined to what extent the explained variances by these sources are shared or unique. We analyzed 1913 unique RT series from 30 different cognitive control and perception-based tasks. On average, the three sources together explained ∼8%-17% of the total variance. The experimental conditions explained on average ∼2.5%-3.5% but did not share explained variance with temporal dependencies. Thus, the largest part of the trial-to-trial fluctuations in RT remained unexplained by these three sources. Unexplained fluctuations may take on nonlinear forms that are not picked up by GLMs. They may also be partially attributable to observable endogenous factors, such as fluctuations in brain activity and bodily states. Still, some extent of randomness may be a feature of the neurobiological system rather than just nuisance. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

方差(未)解释:在感知和认知任务的线性模型中,实验条件和时间依赖性对反应时间变异的解释比例同样很小。
任何一系列的感觉运动动作,即使在感觉输入和运动输出要求在一段时间内保持相同的情况下,其速度和准确性在重复与重复之间都会出现波动。这种波动在实验室神经认知任务的反应时间(RT)系列中尤为突出。尽管这种波动无处不在,但人们对每次试验之间的波动仍然知之甚少。在这里,我们系统地分析了各种神经认知任务的反应时间序列,量化了行为和神经科学研究中经常调查的三个变异性来源(1)实验条件,以诱导变异性的系统模式,(2)短期时间依赖性,如后续试验之间的自相关性,以及(3)实验块和实验阶段的长期时间趋势。此外,我们还研究了这些来源所解释的变异在多大程度上是共享的或独特的。我们分析了来自 30 个不同认知控制和感知任务的 1913 个独特的 RT 序列。平均而言,这三个来源共同解释了总方差的 8%-17%。实验条件平均解释了 2.5%-3.5%,但不与时间依赖性共同解释方差。因此,RT 试验间波动的最大部分仍然是这三个来源无法解释的。无法解释的波动可能以非线性形式出现,而 GLM 无法捕捉到这些波动。它们也可能部分归因于可观察到的内生因素,如大脑活动和身体状态的波动。不过,某种程度的随机性可能是神经生物学系统的一个特征,而不仅仅是一种干扰。(PsycInfo Database Record (c) 2024 APA, 版权所有)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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