论文标题
基于眼睛跟踪数据的系统1和系统2交互分析的端到端模型
End-to-End Models for the Analysis of System 1 and System 2 Interactions based on Eye-Tracking Data
论文作者
论文摘要
虽然假设双重认知系统的理论持有,但仍需要定量确认来了解和识别两个系统或冲突事件之间的相互作用。眼动运动是个人注意力负荷的最直接标记之一,可以作为重要信息的重要性。在这项工作中,我们在著名的Stroop测试的修改后视觉版本中提出了一种计算方法,以通过收集和处理与眼动的数据来识别两个系统之间的不同任务和潜在冲突事件。统计分析表明,所选变量可以表征不同场景中专心负载的变化。此外,我们表明机器学习技术允许以良好的分类准确性区分不同的任务,并在深度研究视线动力学方面进行更多的研究。
While theories postulating a dual cognitive system take hold, quantitative confirmations are still needed to understand and identify interactions between the two systems or conflict events. Eye movements are among the most direct markers of the individual attentive load and may serve as an important proxy of information. In this work we propose a computational method, within a modified visual version of the well-known Stroop test, for the identification of different tasks and potential conflicts events between the two systems through the collection and processing of data related to eye movements. A statistical analysis shows that the selected variables can characterize the variation of attentive load within different scenarios. Moreover, we show that Machine Learning techniques allow to distinguish between different tasks with a good classification accuracy and to investigate more in depth the gaze dynamics.