用于眼动跟踪阅读数据垂直漂移校正的双输入流变换器

Thomas M. Mercier;Marcin Budka;Martin R. Vasilev;Julie A. Kirkby;Bernhard Angele;Timothy J. Slattery
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摘要

我们引入了一种新颖的双输入流变换器(DIST),用于解决将阅读过程中收集的眼动跟踪数据中的固定点分配到读者实际关注的文本行这一具有挑战性的问题。由于存在垂直漂移形式的噪声,这一后处理步骤对于阅读数据的分析至关重要。我们在九个不同数据集的综合套件上对 DIST 和十一种经典方法进行了评估。我们证明,将 DIST 模型的多个实例组合在一个集合中,在所有数据集上都能达到很高的准确度。进一步将 DIST 模型与最佳经典方法相结合,平均准确率可达 98.17%。我们的方法为解决阅读研究中人工划线的瓶颈问题迈出了重要一步。通过广泛的分析和消融研究,我们确定了有助于 DIST 取得成功的关键因素,包括结合行重叠特征和使用第二输入流。通过严格的评估,我们证明了 DIST 对各种实验设置的稳健性,使其成为该领域从业人员的安全首选。
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Dual Input Stream Transformer for Vertical Drift Correction in Eye-Tracking Reading Data
We introduce a novel Dual Input Stream Transformer (DIST) for the challenging problem of assigning fixation points from eye-tracking data collected during passage reading to the line of text that the reader was actually focused on. This post-processing step is crucial for analysis of the reading data due to the presence of noise in the form of vertical drift. We evaluate DIST against eleven classical approaches on a comprehensive suite of nine diverse datasets. We demonstrate that combining multiple instances of the DIST model in an ensemble achieves high accuracy across all datasets. Further combining the DIST ensemble with the best classical approach yields an average accuracy of 98.17%. Our approach presents a significant step towards addressing the bottleneck of manual line assignment in reading research. Through extensive analysis and ablation studies, we identify key factors that contribute to DIST's success, including the incorporation of line overlap features and the use of a second input stream. Via rigorous evaluation, we demonstrate that DIST is robust to various experimental setups, making it a safe first choice for practitioners in the field.
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