A Step Forward in Identifying Socially Desirable Respondents: An Integrated Machine Learning Model Considering T-Scores, Response Time, Kinematic Indicators, and Eye Movements
Cristina Mazza, Irene Ceccato, Loreta Cannito, Merylin Monaro, Eleonora Ricci, Emanuela Bartolini, Alessandra Cardinale, Adolfo Di Crosta, Matteo Cardaioli, Pasquale La Malva, Marco Colasanti, Renata Tambelli, Luciano Giromini, Rocco Palumbo, Riccardo Palumbo, Alberto Di Domenico, Paolo Roma
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引用次数: 0
Abstract
Context: In high-stakes assessments, such as court cases or managerial evaluations, decision-makers heavily rely on psychological testing. These assessments often play a crucial role in determining important decisions that affect a person’s life and have a significant impact on society.
Problem Statement: Research indicates that many psychological assessments are compromised by respondents’ deliberate distortions and inaccurate self-presentations. Among these sources of bias, socially desirable responding (SDR) describes the tendency to provide overly positive self-descriptions. This positive response bias can invalidate test results and lead to inaccurate assessments.
Objectives: The present study is aimed at investigating the utility of mouse- and eye-tracking technologies for detecting SDR in psychological assessments. By integrating these technologies, the study sought to develop more effective methods for identifying when respondents are presenting themselves in a favorable light.
Methods: Eighty-five participants completed the Lie (L) and Correction (K) scales of the Minnesota Multiphasic Personality Inventory-2 (MMPI-2) twice: once answering honestly and once presenting themselves in a favorable light, with the order of conditions balanced. Repeated measures univariate analyses were conducted on L and K scale T-scores, as well as on mouse- and eye-tracking features, to compare the honest and instructed SDR conditions. Additionally, machine learning models were developed to integrate T-scores, kinematic indicators, and eye movements for predicting SDR.
Results: The results showed that participants in the SDR condition recorded significantly higher T-scores, longer response times, wider mouse trajectories, and avoided looking at the answers they intended to fake, compared to participants in the honest condition. Machine learning algorithms predicted SDR with 70%–78% accuracy.
Conclusion: New assessment strategies using mouse- and eye-tracking can help practitioners identify whether data is genuine or fabricated, potentially enhancing decision-making accuracy.
Implications: Combining self-report measures with implicit data can improve SDR detection, particularly in managerial, organizational, and forensic contexts where precise assessments are crucial.
背景:在法庭案件或管理评估等高风险评估中,决策者非常依赖心理测试。这些评估通常在决定影响个人生活并对社会产生重大影响的重要决策中发挥关键作用:研究表明,许多心理测评都会因为受测者的故意歪曲和不准确的自我陈述而受到影响。在这些偏差来源中,社会期望反应(SDR)描述了提供过于积极的自我描述的倾向。这种积极的反应偏差会使测试结果无效,并导致不准确的评估:本研究旨在调查鼠标和眼球追踪技术在心理测评中检测 SDR 的实用性。通过整合这些技术,本研究试图开发出更有效的方法,以识别受测者何时以有利的方式表现自己:方法:85 名参与者完成了明尼苏达多相人格量表-2(MMPI-2)的谎言量表(L)和更正量表(K)两次:一次诚实作答,一次以有利的角度表现自己,条件顺序保持平衡。我们对 L 和 K 量表 T 分数以及鼠标和眼动跟踪特征进行了重复测量单变量分析,以比较诚实和受指导的 SDR 条件。此外,还开发了机器学习模型来整合 T 分、运动学指标和眼动,以预测 SDR:结果表明,与诚实条件下的参与者相比,SDR 条件下的参与者记录的 T 分数明显更高,反应时间更长,鼠标轨迹更宽,并且避免看他们想要伪造的答案。机器学习算法预测SDR的准确率为70%-78%:结论:使用鼠标和眼动跟踪的新评估策略可以帮助从业人员识别数据是真实的还是伪造的,从而提高决策的准确性:将自我报告测量与内隐数据相结合可以提高SDR的检测能力,尤其是在管理、组织和法医等精确评估至关重要的场合。
期刊介绍:
Human Behavior and Emerging Technologies is an interdisciplinary journal dedicated to publishing high-impact research that enhances understanding of the complex interactions between diverse human behavior and emerging digital technologies.