等级间信度
心理学
克朗巴赫阿尔法
组内相关
可靠性(半导体)
比例(比率)
考试(生物学)
内部一致性
临床心理学
心理测量学
评定量表
发展心理学
生物
量子力学
物理
古生物学
功率(物理)
作者
Johannes Nau,Ruud J.G. Halfens,Ian Needham,Theo Dassen
标识
DOI:10.1111/j.1365-2648.2009.05087.x
摘要
Abstract Title. The De‐Escalating Aggressive Behaviour Scale: development and psychometric testing. Aim. This paper is a report of a study to develop and test the psychometric properties of a scale measuring nursing students’ performance in de‐escalation of aggressive behaviour. Background. Successful training should lead not merely to more knowledge and amended attitudes but also to improved performance. However, the quality of de‐escalation performance is difficult to assess. Method. Based on a qualitative investigation, seven topics pertaining to de‐escalating behaviour were identified and the wording of items tested. The properties of the items and the scale were investigated quantitatively. A total of 1748 performance evaluations by students (rater group 1) from a skills laboratory were used to check distribution and conduct a factor analysis. Likewise, 456 completed evaluations by de‐escalation experts (rater group 2) of videotaped performances at pre‐ and posttest were used to investigate internal consistency, interrater reliability, test–retest reliability, effect size and factor structure. Data were collected in 2007–2008 in German. Findings. Factor analysis showed a unidimensional 7‐item scale with factor loadings ranging from 0·55 to 0·81 (rater group 1) and 0·48 to 0·88 (rater group 2). Cronbach’s alphas of 0·87 and 0·88 indicated good internal consistency irrespective of rater group. A Pearson’s r of 0·80 confirmed acceptable test–retest reliability, and interrater reliability Intraclass Correlation 3 ranging from 0·77 to 0·93 also showed acceptable results. The effect size r of 0·53 plus Cohen’s d of 1·25 indicates the capacity of the scale to detect changes in performance. Conclusion. Further research is needed to test the English version of the scale and its validity.
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