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Increased temporal sensitivity for threat: A Bayesian generalized linear mixed modeling approach

机译:增加对威胁的时间敏感性:贝叶斯广义线性混合建模方法

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摘要

People overestimate the duration of threat-related facial expressions, and this effect increases with self-reported fearfulness (Tipples in Emotion, 8, 127–131, , Emotion, 11, 74–80, ). One explanation (Cheng, Tipples, Narayanan, & Meck in Timing and Time Perception, 4, 99–122, ) for this effect is that emotion increases the rate at which temporal information accumulates. Here I tested whether increased overestimation for threat-related facial expressions in high fearfulness generalizes to pictures of threatening animals. A further goal was to illustrate the use of Bayesian generalized linear mixed modeling (GLMM) to gain more accurate estimates of temporal performance, including estimates of temporal sensitivity. Participants (N = 53) completed a temporal bisection task in which they judged the presentation duration for pictures of threatening animals (poised to attack) and nonthreatening animals. People overestimated the duration of threatening animals, and the effect increased with self-reported fearfulness. In support of increased accumulation of pacemaker ticks due to threat, temporal sensitivity was higher for threat than for nonthreat images. Analyses indicated that temporal sensitivity effects may have been absent in previous research because of the method used to calculate the index of temporal sensitivity. The benefits of using Bayesian GLMM are highlighted, and researchers are encouraged to use this method as the first option for analyzing temporal bisection data.
机译:人们高估了与威胁相关的面部表情的持续时间,并且这种影响会随着自我报告的恐惧而增加(Tipples in Emotion,8,127–131,,Emotion,11,11,74–80,)。一种解释(Cheng,Tipples,Naraayanan和Meck in Timing and Time Perception,4,99-122,)是这种效果的一种解释是,情感会增加时间信息的积累速度。在这里,我测试了在高度恐惧中对威胁相关面部表情的高估是否能归纳为威胁动物的照片。另一个目标是说明如何使用贝叶斯广义线性混合建模(GLMM)获得更准确的时间性能估算,包括时间灵敏度估算。参与者(N = 53)完成了一个时间上的对分任务,他们在其中判断了威胁动物(准备攻击)和非威胁动物的图片的呈现时间。人们高估了威胁动物的持续时间,其后果随着自我报告的恐惧而增加。为了支持起因于威胁的起搏器滴答声的累积增加,对威胁的时间敏感性高于对非威胁图像的敏感性。分析表明,由于用于计算时间敏感性指标的方法,以前的研究可能没有时间敏感性的影响。强调了使用贝叶斯GLMM的好处,并鼓励研究人员将此方法用作分析时间二等分数据的首选方法。

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