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A scaled difference chi-square test statistic for moment structure analysis

Abstract

A family of scaling corrections aimed to improve the chi-square approximation of goodness-of-fit test statistics in small samples, large models, and nonnormal data was proposed in Satorra and Bentler (1994). For structural equations models, Satorra-Bentler's (SB) scaling corrections are available in standard computer software. Often, however, the interest is not on the overall fit of a model, but on a test of the restrictions that a null model say M0{\cal M}_0 implies on a less restricted one M1{\cal M}_1. If T0T_0 and T1T_1 denote the goodness-of-fit test statistics associated to M0{\cal M}_0 and M1{\cal M}_1, respectively, then typically the difference Td=T0−T1T_d = T_0 - T_1 is used as a chi-square test statistic with degrees of freedom equal to the difference on the number of independent parameters estimated under the models M0{\cal M}_0 and M1{\cal M}_1. As in the case of the goodness-of-fit test, it is of interest to scale the statistic TdT_d in order to improve its chi-square approximation in realistic, i.e., nonasymptotic and nonnormal, applications. In a recent paper, Satorra (1999) shows that the difference between two Satorra- Bentler scaled test statistics for overall model fit does not yield the correct SB scaled difference test statistic. Satorra developed an expression that permits scaling the difference test statistic, but his formula has some practical limitations, since it requires heavy computations that are not available in standard computer software. The purpose of the present paper is to provide an easy way to compute the scaled difference chi-square statistic from the scaled goodness-of-fit test statistics of models M0{\cal M}_0 and M1{\cal M}_1. A Monte Carlo study is provided to illustrate the performance of the competing statistics.Moment-structures, goodness-of-fit test, chi-square difference test statisitc, chi-square distribution, non-normality

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