Hi,
Yes, lavaan 0.5-21, (R 3.3.1).
Full lavaan call:
planA1brsepart.model <- '
# measurement
posrse =~ feelimapersonofworth + feelihaveanumberofgoodqualities + abletodothingsaswell +
takeapositiveattitude + satisfiedwithmyself
negrse =~ revinclinedtofeeliamafailure + revdonothavemuchtobeproudof +
revwishicouldhavemorerespect + revfeeluselessattimes + revthinkiamnogoodatall
matr =~ whenpeopleneedhelpometome + peopletendtorelyonmeforsupport + revnotsomeonepeoplewouldturnto +
peopletrustme + peoplelooktomeforadviceon + peoplecountonme
mati =~ revnoonereallyneedsme + successessourceofpridetopeople + revnoonewouldnoticeifidisappeared +
revnoonetakesprideinmyaccomplishments + revpeopledonotcarewhathappenstome + revpeopleareindifferenttomyneeds +
peoplewillinconveniencethemselves + peoplereacttowhathappenstome + revpeopleusuallydontwanttohearaboutit +
peoplewhocareenoughtocriticize
mata =~ peopledonotignoreme + revfeelinvisible + revnoonerecognizesme +
peopleusuallyawareofmypresence + revnottoremembermyname + revhardformetogetattention +
revpeopledonotnotice + peoplegenerallyknowwheniamaround
fbi =~ timeonfb.fcd + numfbf.fcd + ntimechkpw.fcd + fbpartofmyeverydayactivity + proudtotellmonFacebook + fbpartofdailyroutine + feeloutoftouch +
feelpartoffbcommunity + sorryiffbshutdown
# latent correlations
posrse ~~ 0*matr
posrse ~~ 0*mati
posrse ~~ 0*mata
negrse ~~ 0*matr
negrse ~~ 0*mati
negrse ~~ 0*mata
matr ~~ 0*mati
matr ~~ 0*mata
mati ~~ 0*mata
posrse ~~ 0*negrse
# mixed observed/latent regressions
matr ~ gender + age + fbi
mati ~ gender + age + fbi
mata ~ gender + age + fbi
posrse ~ gender + age + fbi
negrse ~ gender + age + fbi
## modindex specified
'
planA1brsepart.fit <- sem(planA1b.model, data = fm,
ordered = c(
"fbpartofmyeverydayactivity", "proudtotellmonFacebook", "fbpartofdailyroutine", "feeloutoftouch",
"feelpartoffbcommunity", "sorryiffbshutdown",
"feelimapersonofworth", "feelihaveanumberofgoodqualities", "revinclinedtofeeliamafailure",
"abletodothingsaswell", "revdonothavemuchtobeproudof", "takeapositiveattitude", "satisfiedwithmyself",
"revwishicouldhavemorerespect", "revfeeluselessattimes", "revthinkiamnogoodatall",
"whenpeopleneedhelpometome", "peopletendtorelyonmeforsupport", "revnotsomeonepeoplewouldturnto",
"peopletrustme", "peoplelooktomeforadviceon", "peoplecountonme",
"revnoonereallyneedsme", "successessourceofpridetopeople", "revnoonewouldnoticeifidisappeared",
"revnoonetakesprideinmyaccomplishments", "revpeopledonotcarewhathappenstome", "revpeopleareindifferenttomyneeds",
"peoplewillinconveniencethemselves", "peoplereacttowhathappenstome", "revpeopleusuallydontwanttohearaboutit",
"peoplewhocareenoughtocriticize",
"peopledonotignoreme", "revfeelinvisible", "revnoonerecognizesme",
"peopleusuallyawareofmypresence", "revnottoremembermyname",
"revhardformetogetattention", "revpeopledonotnotice",
"peoplegenerallyknowwheniamaround", "ntimechkpw.fcd", "timeonfb.fcd", "numfbf.fcd"), estimator = "WLSMV"
)
summary(planA1brsepart.fit, fit.measures = TRUE, standardized = TRUE)
And the most of the output:
> summary(planA1brsepart.fit, fit.measures = TRUE, standardized = TRUE)
lavaan (0.5-21) converged normally after 115 iterations
Used Total
Number of observations 384 391
Estimator ML
Minimum Function Test Statistic 1928.705
Degrees of freedom 921
P-value (Chi-square) 0.000
Model test baseline model:
Minimum Function Test Statistic 8321.388
Degrees of freedom 989
P-value 0.000
User model versus baseline model:
Comparative Fit Index (CFI) 0.863
Tucker-Lewis Index (TLI) 0.852
Loglikelihood and Information Criteria:
Loglikelihood user model (H0) NA
Loglikelihood unrestricted model (H1) NA
Number of free parameters 111
Akaike (AIC) NA
Bayesian (BIC) NA
Root Mean Square Error of Approximation:
RMSEA 0.053
90 Percent Confidence Interval 0.050 0.057
P-value RMSEA <= 0.05 0.048
Standardized Root Mean Square Residual:
SRMR 0.059
Parameter Estimates:
Information Expected
Standard Errors Standard
Latent Variables:
Estimate Std.Err z-value P(>|z|) Std.lv Std.all
posrse =~
feelmprsnfwrth 1.000 0.643 0.866
flhvnmbrfgdqlt 0.921 0.044 20.888 0.000 0.592 0.838
abltdthngsswll 0.800 0.049 16.293 0.000 0.515 0.716
takeapostvtttd 0.986 0.051 19.370 0.000 0.634 0.801
satsfdwthmyslf 0.981 0.051 19.097 0.000 0.631 0.794
negrse =~
rvnclndtflmflr 1.000 0.698 0.813
rvdnthvmchtbpr 0.935 0.059 15.867 0.000 0.653 0.744
rvwshcldhvmrrs 0.850 0.067 12.660 0.000 0.593 0.620
revfelslssttms 1.095 0.063 17.331 0.000 0.765 0.795
revthnkmngdtll 1.085 0.062 17.613 0.000 0.757 0.805
matr =~
whnpplndhlpmtm 1.000 0.556 0.664
ppltndtrlynmfr 1.094 0.098 11.166 0.000 0.609 0.694
rvntsmnpplwldt 0.747 0.087 8.620 0.000 0.416 0.510
peopletrustme 0.988 0.087 11.417 0.000 0.550 0.715
pepllktmfrdvcn 1.073 0.111 9.628 0.000 0.597 0.579
peoplecountonm 0.986 0.092 10.748 0.000 0.548 0.661
mati =~
revnonrllyndsm 1.000 0.597 0.683
sccssssrcfprdt 0.690 0.088 7.871 0.000 0.412 0.433
rvnnwldntcfdsp 0.874 0.077 11.297 0.000 0.522 0.635
rvnntksprdnmyc 0.804 0.076 10.559 0.000 0.480 0.590
rvppldntcrwhth 0.904 0.077 11.765 0.000 0.540 0.663
rvpplrndffrntt 1.083 0.091 11.922 0.000 0.646 0.673
pplwllncnvnnct 0.722 0.099 7.262 0.000 0.431 0.398
pplrcttwhthppn 0.847 0.092 9.203 0.000 0.506 0.510
rvpplsllydntwn 1.052 0.092 11.422 0.000 0.628 0.642
pplwhcrnghtcrt 0.653 0.079 8.217 0.000 0.389 0.453
mata =~
peopledontgnrm 1.000 0.324 0.315
revfeelinvisbl 2.230 0.391 5.698 0.000 0.722 0.636
revnoonrcgnzsm 1.659 0.296 5.614 0.000 0.537 0.599
pplsllywrfmypr 1.226 0.260 4.707 0.000 0.397 0.368
rvnttrmmbrmynm 1.345 0.269 4.992 0.000 0.435 0.420
rvhrdfrmtgtttn 2.441 0.411 5.942 0.000 0.790 0.787
revpeopldntntc 2.423 0.406 5.970 0.000 0.784 0.812
pplgnrllyknwwh 1.726 0.304 5.681 0.000 0.559 0.628
fbi =~
timeonfb.fcd 1.000 0.204 0.436
numfbf.fcd 0.296 0.133 2.228 0.026 0.060 0.121
ntimechkpw.fcd 1.265 0.178 7.117 0.000 0.258 0.521
fbprtfmyvrydyc 5.717 0.651 8.782 0.000 1.167 0.890
prodttllmnFcbk 2.728 0.377 7.241 0.000 0.557 0.539
fbpartofdlyrtn 5.829 0.661 8.821 0.000 1.190 0.908
feeloutoftouch 4.646 0.584 7.953 0.000 0.948 0.661
flprtffbcmmnty 3.785 0.482 7.846 0.000 0.773 0.640
sorryffbshtdwn 3.704 0.492 7.530 0.000 0.756 0.584
Regressions:
Estimate Std.Err z-value P(>|z|) Std.lv Std.all
matr ~
gender 0.254 0.080 3.179 0.001 0.457 0.178
age -0.026 0.009 -2.894 0.004 -0.046 -0.162
fbi 0.236 0.159 1.481 0.139 0.086 0.086
mati ~
gender 0.093 0.085 1.096 0.273 0.155 0.061
age -0.006 0.009 -0.622 0.534 -0.010 -0.034
fbi 0.237 0.171 1.387 0.165 0.081 0.081
mata ~
gender 0.018 0.046 0.391 0.696 0.055 0.021
age -0.004 0.005 -0.756 0.449 -0.012 -0.042
fbi 0.165 0.096 1.719 0.086 0.104 0.104
posrse ~
gender -0.162 0.088 -1.846 0.065 -0.252 -0.099
age -0.004 0.010 -0.378 0.706 -0.006 -0.020
fbi 0.084 0.175 0.480 0.631 0.027 0.027
negrse ~
gender -0.148 0.097 -1.531 0.126 -0.212 -0.083
age 0.001 0.011 0.137 0.891 0.002 0.007
fbi -0.272 0.195 -1.395 0.163 -0.080 -0.080
Covariances:
Estimate Std.Err z-value P(>|z|) Std.lv Std.all
.posrse ~~
.matr 0.072 0.021 3.378 0.001 0.210 0.210
.mati 0.159 0.025 6.255 0.000 0.419 0.419
.mata 0.079 0.018 4.378 0.000 0.383 0.383
.negrse ~~
.matr 0.082 0.024 3.472 0.001 0.221 0.221
.mati 0.220 0.030 7.263 0.000 0.534 0.534
.mata 0.106 0.023 4.714 0.000 0.476 0.476
.matr ~~
.mati 0.177 0.026 6.819 0.000 0.555 0.555
.mata 0.094 0.020 4.721 0.000 0.545 0.545
.mati ~~
.mata 0.173 0.033 5.281 0.000 0.905 0.905
.posrse ~~
.negrse 0.370 0.035 10.460 0.000 0.835 0.835
A short file with 50 cases (csv file) attached.
Thanks,
Scot