Developing, evaluating, and interpreting personality state measures: A framework based on the revised latent state-trait theory

Martina Bader, Simon Columbus, Ingo Zettler, Axel Mayer
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Abstract

States are increasingly important in personality theory and research. Yet, the assessment of personality states usually relies on ad hoc measures whose development and evaluation are largely separated from theoretical considerations. To enable theory-guided development and evaluation of personality state measures, we introduce a framework based on the revised latent state-trait (LST-R) theory. The theory defines latent states as the expectation of an observed measure given a person in a specific situation, which can be decomposed into latent traits and latent situation-specific state residuals. Consequently, items and scales can be evaluated for their reliability due to latent traits (consistency) and situation-specific influences (specificity). We propose that specificity, in particular, is an appealing property for instruments designed to assess personality states. We illustrate this framework with experience sampling data on personality states. Our framework has implications for both the conceptualisation and the assessment of personality states. On the theoretical side, we provide a formal definition of personality states, which enables integration between trait-, process-, and development-focused theories. On the practical side, we show how using LST-R models allows researchers to develop and evaluate state measures on their own terms rather than applying criteria for trait measures to assess the qualities of state measures.
开发、评估和解释人格状态测量:基于经修订的潜在状态-特质理论的框架
在人格理论和研究中,状态的重要性与日俱增。然而,人格状态的评估通常依赖于临时性的测量方法,其开发和评估在很大程度上脱离了理论考虑。为了能够在理论指导下开发和评估人格状态测量,我们引入了一个基于修正的潜状态-特质(LST-R)理论的框架。该理论将潜状态定义为一个人在特定情境中对观察到的测量结果的预期,可分解为潜特质和潜情境特定状态残差。因此,可以根据潜在特质(一致性)和特定情境影响(特异性)来评估项目和量表的可靠性。我们认为,对于评估人格状态的工具来说,特异性尤其具有吸引力。我们用人格状态的经验抽样数据来说明这一框架。我们的框架对人格状态的概念化和评估都有影响。在理论方面,我们为人格状态提供了一个正式的定义,从而能够整合以特质、过程和发展为重点的理论。在实践方面,我们展示了如何使用 LST-R 模型让研究人员根据自己的条件来开发和评估状态测量,而不是应用特质测量的标准来评估状态测量的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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