操作化
构造(python库)
兴旺的
心理学
压力源
心理弹性
结构效度
模式
弹性(材料科学)
心理测量学
应用心理学
社会心理学
计算机科学
发展心理学
临床心理学
心理治疗师
哲学
社会科学
物理
认识论
社会学
热力学
程序设计语言
作者
Sabina Kleitman,Simon Jackson,Lisa Zhang,Matthew D. Blanchard,Nikzad Babaii Rizvandi,Eugene Aidman
标识
DOI:10.3389/fpsyg.2021.717568
摘要
Modern technologies have enabled the development of dynamic game- and simulation-based assessments to measure psychological constructs. This has highlighted their potential for supplementing other assessment modalities, such as self-report. This study describes the development, design, and preliminary validation of a simulation-based assessment methodology to measure psychological resilience-an important construct for multiple life domains. The design was guided by theories of resilience, and principles of evidence-centered design and stealth assessment. The system analyzed log files from a simulated task to derive individual trajectories in response to stressors. Using slope analyses, these trajectories were indicative of four types of responses to stressors: thriving, recovery, surviving, and succumbing. Using Machine Learning, the trajectories were predictive of self-reported resilience (Connor-Davidson Resilience Scale) with high accuracy, supporting construct validity of the simulation-based assessment. These findings add to the growing evidence supporting the utility of gamified assessment of psychological constructs. Importantly, these findings address theoretical debates about the construct of resilience, adding to its theory, supporting the combination of the "trait" and "process" approaches to its operationalization.
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