Measurement invariance of the Domain-Specific Risk-Taking (DOSPERT) scale

IF 1.8 3区 心理学 Q3 PSYCHOLOGY, APPLIED
Dillon Welindt, David M. Condon, Sara J. Weston
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引用次数: 0

Abstract

Group-level risk attitudes are often studied across psychology domains (e.g., binge drinking among college students, and driving risk by gender). In measuring these differences by self-report, such work relies on the assumption that those measures of risk attitude function equivalently across demographic groups—that is, that the measure employed has the property of measurement invariance. Here, we examine the measurement invariance properties of a widely used risk measure, the Domain-Specific Risk-Taking (DOSPERT) scale across different demographic groups. A secondary goal was to determine whether a hierarchical or bifactor model better fits the data. Data were collected from Prolific using a stratified sampling approach to ensure sufficient and unconfounded sampling of sex, socioeconomic status (SES), and race (N = 412). Sample groups consisted of approximately 50 participants each, based on the intersection of three dichotomized demographic groups (high vs. low SES, White vs. non-White, and female vs. male). Subjects completed the 30-item form of the DOSPERT assessing likelihood, perceived benefit, and riskiness of the same 30 behaviors. The bifactor models showed a superior fit to the hierarchical models and were used in subsequent analyses. These analyses demonstrated that no models fit generally acceptable criteria for configural fit, and many models additionally fail cutoffs for metric and scalar invariance. This study adds to findings that the DOSPERT does not perform equivalently across demographic groups. We suggest development of a scale of risk that is invariant across commonly assessed demographic factors.

特定领域风险承担(DOSPERT)量表的测量不变性
群体层面的风险态度经常在心理学领域进行研究(例如,大学生的酗酒和性别驾驶风险)。在通过自我报告来测量这些差异时,这样的工作依赖于这样一个假设,即这些风险态度的测量方法在不同的人口群体中起着相同的作用——也就是说,所采用的测量方法具有测量不变性的性质。在这里,我们研究了一个广泛使用的风险度量的测量不变性属性,领域特定风险承担(DOSPERT)量表跨越不同的人口统计群体。第二个目标是确定层次模型或双因素模型是否更适合数据。数据采用分层抽样方法收集,以确保性别、社会经济地位(SES)和种族(N = 412)的充分和无混杂抽样。每个样本组由大约50名参与者组成,基于三个二分类的人口统计学组(高与低SES,白人与非白人,女性与男性)的交集。受试者完成了DOSPERT的30项表格,评估相同30种行为的可能性、感知收益和风险。双因子模型与层次模型拟合较好,并用于后续分析。这些分析表明,没有模型符合一般可接受的配置拟合标准,而且许多模型还没有达到度量和标量不变性的截止值。这项研究进一步表明,DOSPERT在不同人口群体中的表现并不相同。我们建议制定一种风险量表,该量表在通常评估的人口因素中是不变的。
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来源期刊
CiteScore
4.40
自引率
5.00%
发文量
40
期刊介绍: The Journal of Behavioral Decision Making is a multidisciplinary journal with a broad base of content and style. It publishes original empirical reports, critical review papers, theoretical analyses and methodological contributions. The Journal also features book, software and decision aiding technique reviews, abstracts of important articles published elsewhere and teaching suggestions. The objective of the Journal is to present and stimulate behavioral research on decision making and to provide a forum for the evaluation of complementary, contrasting and conflicting perspectives. These perspectives include psychology, management science, sociology, political science and economics. Studies of behavioral decision making in naturalistic and applied settings are encouraged.
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