The measurement of psychological constructs is frequently based on self-report tests, which often have Likert-type items rated from "Strongly Disagree" to "Strongly Agree". Recently, a family of item response theory (IRT) models called IRTree models have emerged that can parse out content traits (e.g., personality traits) from noise traits (e.g., response styles). In this study, we compare the selection validity and adverse impact consequences of noise traits on selection when scores are estimated using a generalized partial credit model (GPCM) or an IRTree model. First, we present a simulation which demonstrates that when noise traits do exist, the selection decisions made based on the IRTree model estimated scores have higher accuracy rates and have less instances of adverse impact based on extreme response style group membership when compared to the GPCM. Both models performed similarly when there was no influence of noise traits on the responses. Second, we present an application using data collected from the Open-Source Psychometrics Project Fisher Temperament Inventory dataset. We found that the IRTree model had a better fit, but a high agreement rate between the model decisions resulted in virtually identical impact ratios between the models. We offer considerations for applications of the IRTree model and future directions for research.
Using IRTree Models to Promote Selection Validity in the Presence of Extreme Response Styles.
使用 IRTree 模型提高极端反应风格下的选拔有效性
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作者:Quirk Victoria L, Kern Justin L
| 期刊: | Journal of Intelligence | 影响因子: | 3.400 |
| 时间: | 2023 | 起止号: | 2023 Nov 17; 11(11):216 |
| doi: | 10.3390/jintelligence11110216 | ||
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