Zhang Pan, Zhao Yukai, Dosher Barbara Anne, Lu Zhong-Lin
Laboratory of Brain Processes (LOBES), Department of Psychology, The Ohio State University, Columbus, OH, USA.
Department of Cognitive Sciences and Institute of Mathematical Behavioral Sciences, University of California, Irvine, CA, USA.
J Vis. 2019 Jul 1;19(7):14. doi: 10.1167/19.7.14.
The staircase method has been widely used in measuring perceptual learning. Recently, Zhao, Lesmes, and Lu (2017, 2019) developed the quick Change Detection (qCD) method and applied it to measure the trial-by-trial time course of dark adaptation. In the current study, we conducted two simulations to evaluate the performance of the 3-down/1-up staircase and qCD methods in measuring perceptual learning in a two-alternative forced-choice task. In Study 1, three observers with different time constants (40, 80, and 160 trials) of an exponential learning curve were simulated. Each simulated observer completed staircases with six step sizes (1%, 5%, 10%, 20%, 30%, and 60%) and a qCD procedure, each starting at five levels (+50%, +25%, 0, -25%, and -50% different from the true threshold in the first trial). We found the following results: Staircases with 1% and 5% step sizes failed to generate more than five reversals half of the time; and the bias and standard deviations of thresholds estimated from the post hoc segment-by-segment qCD analysis were much smaller than those from the staircase method with the other four step sizes. In Study 2, we simulated thresholds in the transfer phases with the same time constants and 50% transfer for each observer in Study 1. We found that the estimated transfer indexes from qCD showed smaller biases and standard deviations than those from the staircase method. In addition, rescoring the simulated data from the staircase method using the Bayesian estimation component of the qCD method resulted in much-improved estimates. We conclude that the qCD method characterizes the time course of perceptual learning and transfer more accurately, precisely, and efficiently than the staircase method, even with the optimal 10% step size.
阶梯法已被广泛应用于测量知觉学习。最近,赵、莱斯梅斯和卢(2017年、2019年)开发了快速变化检测(qCD)方法,并将其应用于测量暗适应的逐次试验时间进程。在本研究中,我们进行了两项模拟,以评估3降/1升阶梯法和qCD方法在二择一强制选择任务中测量知觉学习的性能。在研究1中,模拟了三名具有不同指数学习曲线时间常数(40、80和160次试验)的观察者。每个模拟观察者完成了六种步长(1%、5%、10%、20%、30%和60%)的阶梯法程序和一个qCD程序,每个程序都从五个水平开始(在第一次试验中与真实阈值相差+50%、+25%、0、-25%和-50%)。我们发现以下结果:步长为1%和5%的阶梯法在一半的时间内未能产生超过五次反转;并且事后逐段qCD分析估计的阈值偏差和标准差远小于其他四种步长的阶梯法。在研究2中,我们模拟了研究1中每个观察者在具有相同时间常数和50%转移率的转移阶段的阈值。我们发现,qCD估计的转移指数比阶梯法的偏差和标准差更小。此外,使用qCD方法的贝叶斯估计组件对阶梯法的模拟数据进行重新评分,得到了显著改进的估计值。我们得出结论,即使使用最优的10%步长,qCD方法在表征知觉学习和转移的时间进程方面比阶梯法更准确、精确和高效。