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Part II: On the Use, the Misuse, and the Very Limited Usefulness of Cronbach's Alpha: Discussing Lower Bounds and Correlated Errors.

Klaas SijtsmaJulius M Pfadt
Published in: Psychometrika (2021)
Prior to discussing and challenging two criticisms on coefficient [Formula: see text], the well-known lower bound to test-score reliability, we discuss classical test theory and the theory of coefficient [Formula: see text]. The first criticism expressed in the psychometrics literature is that coefficient [Formula: see text] is only useful when the model of essential [Formula: see text]-equivalence is consistent with the item-score data. Because this model is highly restrictive, coefficient [Formula: see text] is smaller than test-score reliability and one should not use it. We argue that lower bounds are useful when they assess product quality features, such as a test-score's reliability. The second criticism expressed is that coefficient [Formula: see text] incorrectly ignores correlated errors. If correlated errors would enter the computation of coefficient [Formula: see text], theoretical values of coefficient [Formula: see text] could be greater than the test-score reliability. Because quality measures that are systematically too high are undesirable, critics dismiss coefficient [Formula: see text]. We argue that introducing correlated errors is inconsistent with the derivation of the lower bound theorem and that the properties of coefficient [Formula: see text] remain intact when data contain correlated errors.
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