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使用编码为扫描路径图像的注视数据预测经济博弈中的选择行为。

Predicting choice behaviour in economic games using gaze data encoded as scanpath images.

机构信息

MoMiLab Research Unit, IMT School for Advanced Studies Lucca, Lucca, Italy.

AXES Research Unit, IMT School for Advanced Studies Lucca, Lucca, Italy.

出版信息

Sci Rep. 2023 Mar 23;13(1):4722. doi: 10.1038/s41598-023-31536-5.

Abstract

Eye movement data has been extensively utilized by researchers interested in studying decision-making within the strategic setting of economic games. In this paper, we demonstrate that both deep learning and support vector machine classification methods are able to accurately identify participants' decision strategies before they commit to action while playing games. Our approach focuses on creating scanpath images that best capture the dynamics of a participant's gaze behaviour in a way that is meaningful for predictions to the machine learning models. Our results demonstrate a higher classification accuracy by 18% points compared to a baseline logistic regression model, which is traditionally used to analyse gaze data recorded during economic games. In a broader context, we aim to illustrate the potential for eye-tracking data to create information asymmetries in strategic environments in favour of those who collect and process the data. These information asymmetries could become especially relevant as eye-tracking is expected to become more widespread in user applications, with the seemingly imminent mass adoption of virtual reality systems and the development of devices with the ability to record eye movement outside of a laboratory setting.

摘要

眼动数据在研究经济博弈策略决策方面受到了广泛关注。本文展示了深度学习和支持向量机分类方法都能够在参与者做出决策前准确识别他们的决策策略。我们的方法侧重于创建扫描路径图像,以捕捉参与者的注视行为动态,从而为机器学习模型提供有意义的预测。与传统上用于分析经济游戏中记录的注视数据的逻辑回归基线模型相比,我们的结果显示分类准确性提高了 18%。从更广泛的角度来看,我们旨在说明眼动数据有可能在战略环境中创造信息不对称,从而有利于收集和处理数据的人。随着眼动追踪技术在用户应用中越来越普及,虚拟现实系统的大规模采用以及能够在实验室外记录眼动的设备的发展,这些信息不对称可能会变得尤为重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/23c7/10036613/e0e2444e0137/41598_2023_31536_Fig1_HTML.jpg

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