In CFA, several statistical tests are used to determine how well the model fits to the data. When reporting the results of a confirmatory factor analysis, one is urged to report: a) the proposed models, b) any modifications made, c) which measures identify each latent variable, d) correlations between latent variables, e) any other pertinent information, such as whether constraints are used. With regard to selecting model fit statistics to report, one should not simply report the statistics that estimate the best fit, though this may be tempting. Though several varying opinions exist, Kline (2010) recommends reporting the
chi-squared test, the
root mean square error of approximation (RMSEA), the
comparative fit index (CFI), and the standardised root mean square residual (SRMR). Absolute fit indices include, but are not limited to, the Chi-Squared test, RMSEA, GFI, AGFI, RMR, and SRMR.
Chi-squared test The chi-squared test indicates the difference between observed and expected
covariance matrices. Values closer to zero indicate a better fit; smaller difference between expected and observed covariance matrices.
Root mean square residual and standardized root mean square residual The root mean square residual (RMR) and standardized root mean square residual (SRMR) are the square root of the discrepancy between the sample covariance matrix and the model covariance matrix.
Relative fit indices Relative fit indices (also called “incremental fit indices” and “comparative fit indices”) compare the chi-square for the hypothesized model to one from a “null”, or “baseline” model. However, NFI tends to be negatively biased.) resolves some of the issues of negative bias, though NNFI values may sometimes fall beyond the 0 to 1 range.
Comparative fit index The comparative fit index (CFI) analyzes the model fit by examining the discrepancy between the data and the hypothesized model, while adjusting for the issues of sample size inherent in the chi-squared test of model fit, and the normed fit index. CFI values range from 0 to 1, with larger values indicating better fit. Previously, a CFI value of .90 or larger was considered to indicate acceptable model fit. However, a 1999 study indicated that a value greater than .90 is needed to ensure that misspecified models are not deemed acceptable. Thus, a CFI value of .95 or higher is presently accepted as an indicator of good fit. ==Identification and underidentification==