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IMPS2001, July 15-19,2001 Osaka, Japan. Use of SEM programs to precisely measure scale reliability. Yutaka Kano and Yukari Azuma Osaka University. Reliability measure for. Reliability with possibly correlated errors α coefficient. An example.
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IMPS2001, July 15-19,2001Osaka, Japan Use of SEM programs to precisely measure scale reliability Yutaka Kano and Yukari Azuma Osaka University
Reliability measure for • Reliability with possibly correlated errors • α coefficient
An example α 0.69 0.74 0.78ρ’ 0.69 0.64 0.60
Coefficient alpha can be distorted seriously by error correlations e.g. Green-Hershberger (2000), Raykov (2001) In the case, ρ’ has to be used to correctly figure out the reliability From the example
Problem • How can one identify error correlations? • The factor model allowing for (fully) correlated errors is not identifiable, because it contains too many parameters • A trivial solution would be It does not work because
LM approach • Start from the factor model with no error correlation • Perform the LM test for releasing a zero covariance between errors using a SEM program • EQS can perform it most easily and most accurately
Real data analysis • A questionnaire on perception on physical exercise • n=653, p=15, one-factor model • The data were collected by Dr. Oka (Waseda U.)
Result_1 • Best fitted model, with 7 correlated errors • χ2=250.375(df=83) (n=653) • GFI=0.950, CFI=0.952, RMSEA=0.056
Result_2 • Estimates of reliability • α = 0.90 • ρ’ = 0.90 by • ρ’ = 0.87 by LM test • Note that
Search for variables • Even though one factor model is fitted well, inclusion of a variable with small true variance can reduce reliability • There is no convenient way to select variables for the composite scale to have maximum reliability
Mathematically… • It is complicated • It will become more complicated if error correlations are allowed
New program • A new program is being developed which • gives a list of reliability estimates for each factor; • gives a list of predicted reliability estimates when one variable is removed • Error correlations are allowed
Flowchart Well fit? No DATA Free some error covariances to get good fit Factor analysis Yes Decide composite scale items Print reliability End
ρ’ = 0.87 with 15 variables Example, continued
Results • For one-factor model with uncorrelated errors, the variable with the smallest factor loading is least favorable. • If there is a variable whose deletion improves reliability, then this is the variable. • For one-factor model with correlated errors, the variable with the smallest factor loading is not always least favorable. • While deletion of the variable does not improve reliability, there may be other variables to be deleted to improve reliability. • The example here is the case.
Summary • Correlated errors invalidate the coefficient alpha and traditional one-factor based reliability. • LM test is useful to find error correlations. • Magnitude of factor loadings does not necessarily provide accurate information on indicator selection when correlated errors exist. • The forthcoming Web-based program will help reliability analysis.