基于隐马尔可夫模型的眼动分析预测阅读性能

Yueyuan Zheng, Y. Que, Xiao Hu, J. Hsiao
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摘要

阅读是学习的重要媒介,但如何测量学习者在阅读过程中的认知过程是一个挑战。眼动追踪作为多模态学习分析(MmLA)的一种方法,可以提供细粒度的数据来反映阅读过程中的认知过程。在这项研究中,我们调查了眼动是否可以预测文章阅读表现以及语言能力和认知能力。特别是,除了传统的眼动测量外,我们还通过一种新颖的方法——隐马尔可夫模型眼动分析(EMHMM)来评估学习者的眼动模式和一致性。研究发现,较长的扫视长度可以预测更快的阅读速度,同时,较高的英语熟练程度通过较长的扫视长度来预测更快的阅读速度。相比之下,阅读理解的准确性最好通过在阅读开始时更一致的眼睛注视来预测,这可能是由于更高的阅读专业知识导致更好的视觉常规。这些发现对于如何通过眼动测量来评估和促进学习者的阅读以及研究影响阅读表现的因素具有重要意义。所采用的方法可以进一步发展MmLA,并作为通过收集和建模以新模式为中心的关键学习者度量来理解学习者认知过程的实证例子。
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Predicting Reading Performance based on Eye Movement Analysis with Hidden Markov Models
Reading is an essential medium for learning, but it is challenging to measure learners’ cognitive processes during reading. Eye-tracking, as an approach in multimodal learning analytics (MmLA), can provide fine-grained data that reflect cognitive processes during reading. In this study, we investigated whether eye movements could predict passage reading performance in addition to language proficiency and cognitive abilities. In particular, we assessed learners’ eye movement pattern and consistency through a novel method, Eye Movement analysis with Hidden Markov Models (EMHMM), in addition to traditional eye movement measures. We found that longer saccade length predicted faster reading speed Also, higher English proficiency predicted faster reading speed through the mediation of longer saccade length. In contrast, reading comprehension accuracy was best predicted by a more consistent eye fixation at the beginning of reading engagement, which may result from a better developed visual routine due to higher reading expertise. These findings have important implications for ways to assess and facilitate learners’ reading through eye movement measures and to examine factors influencing reading performance. The methods adopted could further the development of MmLA and serve as an empirical example of understanding learners’ cognitive processes through collecting and modeling critical learner-centered metrics in novel modalities.
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