Reingold Eyal M, Sheridan Heather
a University of Toronto , Canada.
b University at Albany , State University of New York , U.S.
Q J Exp Psychol (Hove). 2017 Apr 21:1-32. doi: 10.1080/17470218.2017.1310262.
Much of the investigation of eye-movement control in visual cognition has focused on the influence of experimental variables on mean fixation durations. In the present paper we explored the convergence between two distributional analysis techniques that were recently introduced in this domain. First, Staub, White, Drieghe, Hollway and Rayner, (2010) proposed fitting the ex-Gaussian distribution to individual participants' data in order to ascertain whether a variable has a rapid or a slow influence on fixation durations. Second, the Divergence Point Analysis (DPA) procedure was introduced by Reingold, Reichle, Glaholt and Sheridan (2012, Reingold & Sheridan, 2014) in order to determine more precisely the earliest discernible impact of a variable on the distribution of fixation durations by contrasting survival curves across two experimental conditions and determining the point at which the two curves begin to diverge. In the present paper we introduced a new version of the DPA procedure which is based on ex-Gaussian fitting. We evaluated this procedure by re-analysing data obtained in previous empirical investigations as well as by conducting a simulation study. We demonstrated that the new ex-Gaussian DPA technique produced estimates that were consistent with estimates produced by prior versions of DPA procedure, and in the present simulation, the ex-Gaussian DPA procedure produced somewhat more accurate individual participant divergence point estimates. Based on the present findings we also suggest guidelines for best practices in the use of DPA techniques.
视觉认知中眼动控制的许多研究都集中在实验变量对平均注视持续时间的影响上。在本文中,我们探讨了该领域最近引入的两种分布分析技术之间的趋同性。首先,施陶布、怀特、德里格、霍尔韦和雷纳(2010年)建议将前高斯分布拟合到个体参与者的数据中,以确定一个变量对注视持续时间有快速还是缓慢的影响。其次,赖因戈尔德、赖克尔、格拉霍尔特和谢里丹(2012年,赖因戈尔德和谢里丹,2014年)引入了分歧点分析(DPA)程序,通过对比两个实验条件下的生存曲线并确定两条曲线开始分歧的点,更精确地确定一个变量对注视持续时间分布的最早可察觉影响。在本文中,我们介绍了一种基于前高斯拟合的DPA程序新版本。我们通过重新分析先前实证研究中获得的数据以及进行模拟研究来评估该程序。我们证明,新的前高斯DPA技术产生的估计与DPA程序先前版本产生的估计一致,并且在本模拟中,前高斯DPA程序产生的个体参与者分歧点估计更准确一些。基于目前的研究结果,我们还提出了使用DPA技术的最佳实践指南。