Crump Matthew J C, Lai Walter, Brosowsky Nicholaus P
Department of Psychology.
Can J Exp Psychol. 2019 Dec;73(4):203-215. doi: 10.1037/cep0000182. Epub 2019 Jul 25.
How does prior experience shape skilled performance in structured environments? We use skilled typing of natural text to evaluate correspondence between performance (keystroke timing) and structure in the environment (letter uncertainty). We had ∼350 typists copy-type English text. We reproduced Ostry's (1983) analysis of interkeystroke interval as a function of letter position and word length, that showed prominent first-letter and midword slowing effects. We propose a novel account that letter position and word length effects on keystroke dynamics reflect informational uncertainty about letters in those locations, rather than resource limited planning/buffering processes. We computed positional uncertainty for letters in all positions of words from length one to nine using Google's n-gram database. We show that variance in interkeystroke interval by letter position and word length tracks natural variation in letter uncertainty. Finally, we provide a model showing how a general learning and memory process could acquire sensitivity to patterns of letter uncertainty in natural English. In doing so, we draw an equivalence between Logan's (1988) instance theory of automatization and Shannon's measure of entropy (H) from information theory. Instance theory's predictions for automatization as a function of experience follow exactly the uncertainty in the choice set being automatized. As a result, instance theory stands as a general process model explaining how context-specific experiences in a structured environment tune skilled performance. (PsycINFO Database Record (c) 2019 APA, all rights reserved).
先前的经验如何塑造在结构化环境中的熟练表现?我们使用对自然文本的熟练打字来评估表现(按键时机)与环境结构(字母不确定性)之间的对应关系。我们让约350名打字员抄写英文文本。我们重现了奥斯特里(1983年)对按键间隔作为字母位置和单词长度函数的分析,该分析显示出显著的首字母和单词中间减速效应。我们提出了一种新颖的观点,即字母位置和单词长度对按键动态的影响反映了这些位置字母的信息不确定性,而非资源有限的规划/缓冲过程。我们使用谷歌的n元语法数据库计算了从一到九个字母长度的单词中所有位置字母的位置不确定性。我们表明,按键间隔因字母位置和单词长度的变化跟踪了字母不确定性的自然变化。最后,我们提供了一个模型,展示了一般的学习和记忆过程如何能够获得对自然英语中字母不确定性模式的敏感性。在此过程中,我们在洛根(1988年)的自动化实例理论与信息论中香农的熵(H)度量之间建立了等价关系。实例理论对作为经验函数的自动化的预测恰好遵循正在自动化的选择集中的不确定性。因此,实例理论是一个通用的过程模型,解释了在结构化环境中特定于上下文的经验如何调整熟练表现。(《心理学文摘数据库记录》(c)2019美国心理学会,保留所有权利)