克朗巴赫阿尔法
估计员
统计
等价(形式语言)
数学
可靠性(半导体)
人口
样本量测定
欧米茄
不相关
计量经济学
心理测量学
物理
人口学
离散数学
社会学
功率(物理)
量子力学
作者
Ashley A. Edwards,Keanan J. Joyner,Christopher Schatschneider
标识
DOI:10.1177/0013164421994184
摘要
The accuracy of certain internal consistency estimators have been questioned in recent years. The present study tests the accuracy of six reliability estimators (Cronbach's alpha, omega, omega hierarchical, Revelle's omega, and greatest lower bound) in 140 simulated conditions of unidimensional continuous data with uncorrelated errors with varying sample sizes, number of items, population reliabilities, and factor loadings. Estimators that have been proposed to replace alpha were compared with the performance of alpha as well as to each other. Estimates of reliability were shown to be affected by sample size, degree of violation of tau equivalence, population reliability, and number of items in a scale. Under the conditions simulated here, estimates quantified by alpha and omega yielded the most accurate reflection of population reliability values. A follow-up regression comparing alpha and omega revealed alpha to be more sensitive to degree of violation of tau equivalence, whereas omega was affected greater by sample size and number of items, especially when population reliability was low.
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