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. Author manuscript; available in PMC: 2013 Nov 1.
Published in final edited form as: Compr Psychiatry. 2012 Apr 21;53(8):1071–1077. doi: 10.1016/j.comppsych.2012.03.012

Table 1.

Fit indices for latent class growth models, with the selected 4-class model indicated by shading.

No. of
classes
BICa SABIC Log
Likelihood
Entropy Average class probabilities Adjusted
LMRT b, c
BLRT b,d
C1 7198.8 7182.9 -3582.7 -- -- -- --
C2 7270.0 7254.1 -3618.3 .87 .96, .97 --f -- f
C3 7121.5 7096.1 -3534.1 .75 .81, .94, .90 < .001 < .001
C4 7076.4 7041.5 -3501.5 .73 .92, .89, .73, .77 < .001 < .001
C5 7082.8 7038.3 -3494.7 .71 .82, .67, .90, .85, .60 0.1336 < .001
C6 7091.6 7037.7 -3489.1 .63 .70, .90, .76, .73, .61, .59 0.2217 E e

Note:

a

Decrease greater than 6 indicates “strong” improvement in fit [52]

b

P-value, a lower p-value indicates that the k-class model is preferable over the k-1 class model.

c

Lo-Mendell-Rubin Adjusted likelihood Ratio Test

d

Parametric Bootstrapped Likelihood Ratio Test

e

Not all the bootstrap draws converged.

f

These two tests were not applicable, since within-class variances were specified differently across these two models.