Machine Learning–Driven Adaptive Testing: An Application for the MMPI Assessment

IF 4.3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Daiana Colledani, Egidio Robusto, Pasquale Anselmi
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引用次数: 0

Abstract

This paper aims to examine the effectiveness of machine learning classification algorithms as a strategy to overcome the limitations associated with traditional methods for developing computerized adaptive versions of the Minnesota Multiphasic Personality Inventory-2 (MMPI-2). The focus is on the three scales in the neurotic area of the instrument, namely, hypochondria, depression, and hysteria, which were administered electronically to a nonclinical sample of 383 participants. The findings indicate that a machine learning classifier based on a model tree (ML-MT) algorithm effectively handled the complex MMPI-2 scales, yielding accurate scores while noticeably reducing item administration. In particular, the ML-MT algorithm achieved item savings between 85.99% and 93.78% and produced scores that differed from those of the full-length scales by only 2.5–3.3 points. Compared to the countdown algorithm, the ML-MT algorithm proved to be significantly more efficient and accurate. Furthermore, the ML-MT scores retained their validity, as indicated by correlations with other MMPI-2 scales that were comparable to those obtained with the full-length scales (the average difference between the correlations was less than 0.10). These findings support the potential of the ML-MT algorithm as an effective method for adaptive assessment in the context of the MMPI instruments and other psychometric tools.

机器学习驱动的自适应测试:MMPI评估的应用
本文旨在研究机器学习分类算法作为一种策略的有效性,以克服与开发明尼苏达州多相人格量表-2 (MMPI-2)计算机化自适应版本的传统方法相关的局限性。重点是在仪器的神经区域的三个尺度,即疑病症,抑郁症和歇斯底里症,这是电子管理的非临床样本383名参与者。研究结果表明,基于模型树(ML-MT)算法的机器学习分类器有效地处理了复杂的MMPI-2量表,产生了准确的分数,同时显著减少了项目管理。特别是,ML-MT算法实现了85.99% ~ 93.78%的项目节省,产生的分数与全长量表的分数仅相差2.5 ~ 3.3分。与倒计时算法相比,ML-MT算法的效率和准确率显著提高。此外,ML-MT分数保持了其有效性,与其他MMPI-2量表的相关性表明,与全长量表的相关性相当(相关性之间的平均差异小于0.10)。这些发现支持ML-MT算法在MMPI工具和其他心理测量工具的背景下作为适应性评估的有效方法的潜力。
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来源期刊
Human Behavior and Emerging Technologies
Human Behavior and Emerging Technologies Social Sciences-Social Sciences (all)
CiteScore
17.20
自引率
8.70%
发文量
73
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.
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