Houshmand Chatroudi Amirmahmoud, Mioni Giovanna, Yotsumoto Yuko
Department of Life Sciences, The University of Tokyo, Tokyo, Japan.
Department of General Psychology, University of Padua, Padua, Italy.
Sci Rep. 2024 Feb 2;14(1):2780. doi: 10.1038/s41598-024-53347-y.
One of the frequently employed tasks within the implicit timing paradigm is the foreperiod task. The foreperiod is the time interval spanning from the presentation of a warning signal to the appearance of a target stimulus, during which reaction time trajectory follows time uncertainty. While the typical approach in analyzing foreperiod effects is based on linear approximations, the uncertainty in the estimation of time, expressed by the Weber fraction, implies a nonlinear trend. In the present study, we analyzed the variable foreperiod reaction times from a relatively large sample (n = 109). We found that the linear regression on reaction times and log-transformed reaction times poorly fitted the foreperiod data. However, a nonlinear regression based on an exponential decay function with three distinctive parameters provided the best fit. We discussed the inferential hazards of a simplistic linear approach and demonstrated how a nonlinear formulation can create new opportunities for studies in implicit timing research, which were previously impossible.
内隐计时范式中经常使用的任务之一是前时距任务。前时距是指从呈现警告信号到目标刺激出现的时间间隔,在此期间反应时轨迹遵循时间不确定性。虽然分析前时距效应的典型方法基于线性近似,但由韦伯分数表示的时间估计中的不确定性意味着非线性趋势。在本研究中,我们分析了来自相对较大样本(n = 109)的可变前时距反应时。我们发现,反应时和对数变换后的反应时的线性回归对前时距数据的拟合效果很差。然而,基于具有三个独特参数的指数衰减函数的非线性回归提供了最佳拟合。我们讨论了简单线性方法的推断风险,并展示了非线性公式如何为内隐计时研究创造以前不可能的新机会。