Predicting Decision-Making during an Intelligence Test via Semantic Scanpath Comparisons

Tobias Appel, Lisa Bardach, Enkelejda Kasneci
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Abstract

Fluid intelligence is considered to be the foundation to many aspects of human learning and performance. Individuals’ behavior while solving intelligence tests is therefore an important component in understanding problem-solving strategies and learning processes. We present preliminary results of a novel eye-tracking-based approach to predict participants’ decisions while solving a fluid intelligence test that utilizes semantic scanpath comparisons. Normalizing scanpaths and applying a knn classifier allows us to make individual predictions and combine them to predict final scores. We evaluated our proposed approach on the TüEyeQ dataset published by Kasneci et al. containing data of 315 university students, who worked on the Culture Fair Intelligence Test. Our approach was able to explain 39.207% of variance in the final score and predictions for participants’ final scores showed a correlation of τ = 0.65759 with participants’ actual scores. Overall, the proposed method has shown great potential that can be expanded on in future research.
通过语义扫描路径比较预测智力测验中的决策
流体智力被认为是人类学习和表现的许多方面的基础。因此,个体在解决智力测试时的行为是理解问题解决策略和学习过程的重要组成部分。我们提出了一种新颖的基于眼动追踪的方法的初步结果,该方法在解决利用语义扫描路径比较的流体智力测试时预测参与者的决策。规范化扫描路径和应用已知分类器允许我们进行单独的预测,并将它们组合起来预测最终分数。我们在Kasneci等人发布的包含315名大学生数据的 eyeq数据集上评估了我们提出的方法,这些大学生参与了文化公平智力测试。我们的方法能够解释最终分数中39.207%的方差,并且对参与者最终分数的预测与参与者的实际分数的相关性为τ = 0.65759。总的来说,所提出的方法显示出巨大的潜力,可以在未来的研究中扩展。
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