Recurrence quantification analysis as a method for studying text comprehension dynamics

A. Likens, Kathryn S. McCarthy, L. Allen, D. McNamara
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引用次数: 7

Abstract

Self-explanations are commonly used to assess on-line reading comprehension processes. However, traditional methods of analysis ignore important temporal variations in these explanations. This study investigated how dynamical systems theory could be used to reveal linguistic patterns that are predictive of self-explanation quality. High school students (n = 232) generated self-explanations while they read a science text. Recurrence Plots were generated to show qualitative differences in students' linguistic sequences that were later quantified by indices derived by Recurrence Quantification Analysis (RQA). To predict self-explanation quality, RQA indices, along with summative measures (i.e., number of words, mean word length, and type-token ration) and general reading ability, served as predictors in a series of regression models. Regression analyses indicated that recurrence in students' self-explanations significantly predicted human rated self-explanation quality, even after controlling for summative measures of self-explanations, individual differences, and the text that was read (R2 = 0.68). These results demonstrate the utility of RQA in exposing and quantifying temporal structure in student's self-explanations. Further, they imply that dynamical systems methodology can be used to uncover important processes that occur during comprehension.
递归量化分析作为研究文本理解动态的方法
自我解释通常用于评估在线阅读理解过程。然而,传统的分析方法在这些解释中忽略了重要的时间变化。本研究探讨了动力系统理论如何用于揭示预测自我解释质量的语言模式。高中生(n = 232)在阅读一篇科学文章时进行了自我解释。生成递归图以显示学生语言序列的定性差异,然后通过递归量化分析(RQA)得出的指标对这些差异进行量化。为了预测自我解释的质量,RQA指标以及总结性指标(即字数、平均字长和类型标记比)和一般阅读能力作为一系列回归模型的预测因子。回归分析表明,即使在控制了自我解释、个体差异和阅读文本的总结性措施之后,学生自我解释的复发显著地预测了人类评价的自我解释质量(R2 = 0.68)。这些结果证明了RQA在揭示和量化学生自我解释的时间结构方面的效用。此外,它们暗示动力系统方法论可以用来揭示在理解过程中发生的重要过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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