Detecting the Disengaged Reader - Using Scrolling Data to Predict Disengagement during Reading

Daniel Biedermann, J. Schneider, George-Petru Ciordas-Hertel, B. Eichmann, Carolin Hahnel, Frank Goldhammer, H. Drachsler
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Abstract

When reading long and complex texts, students may disengage and miss out on relevant content. In order to prevent disengaged behavior or to counteract it by means of an intervention, it is ideally detected an early stage. In this paper, we present a method for early disengagement detection that relies only on the classification of scrolling data. The presented method transforms scrolling data into a time series representation, where each point of the series represents the vertical position of the viewport in the text document. This time series representation is then classified using time series classification algorithms. We evaluated the method on a dataset of 565 university students reading eight different texts. We compared the algorithm performance with different time series lengths, data sampling strategies, the texts that make up the training data, and classification algorithms. The method can classify disengagement early with up to 70% accuracy. However, we also observe differences in the performance depending on which of the texts are included in the training dataset. We discuss our results and propose several possible improvements to enhance the method.
检测脱离的读者——使用滚动数据来预测阅读过程中的脱离
在阅读长而复杂的文本时,学生可能会脱离注意力,错过相关内容。为了防止脱离行为或通过干预手段抵消它,理想的情况是在早期发现。在本文中,我们提出了一种仅依赖于滚动数据分类的早期脱离检测方法。所提出的方法将滚动数据转换为时间序列表示,其中序列的每个点表示文本文档中视口的垂直位置。然后使用时间序列分类算法对该时间序列表示进行分类。我们在565名大学生阅读8种不同文本的数据集上评估了这种方法。我们比较了算法在不同时间序列长度、数据采样策略、组成训练数据的文本和分类算法下的性能。该方法可以较早地对脱离进行分类,准确率高达70%。然而,我们也观察到性能的差异,这取决于哪些文本包含在训练数据集中。我们讨论了我们的结果,并提出了一些可能的改进来增强该方法。
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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