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  • Gsem interpretation

    Good evening,
    I am performing the GSEM model of the following sintax:
    Code:
    gsem (SUBJ -> intrins, ) (SUBJ -> Extr, ) (SUBJ -> CosT, ) (SUBJ -> Belonging) (SUBJ -> AbilitySC, ) (SUBJ -> Abilitygap, )  ///
    (female Stereotype 1.female#c.Stereotype -> SUBJ, ) (SUBJ -> Hum, family(gaussian, lcensored(0)) link(identity))(SUBJ -> Ecomath, family(gaussian, lcensored(0)) link(identity) ) (SUBJ -> Stem, family(gaussian, lcensored(0)) link(identity))  (abilitygap -> Hum, family(gaussian, lcensored(0)) link(identity)) (abilitygap -> Ecomath, family(gaussian, lcensored(0)) link(identity)) (abilitygap -> Stem, family(gaussian, lcensored(0)) link(identity))  ///
    (M1[school] -> Ecomath, family(gaussian, lcensored(0)) link(identity)) (M1[school] -> Hum, family(gaussian, lcensored(0)) link(identity) ) (M1[school] -> Stem, family(gaussian, lcensored(0)) link(identity))   if time == 0 , ///
    covstruct(_lexogenous, diagonal) latent(SUBJ M1 ) nocapslatent
    and this is what I get:

    Code:
     
    Log likelihood = -5504.9157
    ( 1) [Hum]M1[school] = 1
    ( 2) [Hum]SUBJ = 1
    Coef. Std. Err. z P>z [95% Conf. Interval]
    intrins
    SUBJ .1935517 .0315363 6.14 0.000 .1317416 .2553618
    _cons -.0956396 .0610386 -1.57 0.117 -.2152729 .0239938
    Extr
    SUBJ .1147982 .0238522 4.81 0.000 .0680489 .1615476
    _cons 2.605941 .0530425 49.13 0.000 2.50198 2.709903
    CosT
    SUBJ -.1312346 .0263191 -4.99 0.000 -.1828192 -.07965
    _cons 3.10876 .0543323 57.22 0.000 3.002271 3.215249
    Belonging
    SUBJ .1044975 .0241242 4.33 0.000 .0572149 .1517801
    _cons 3.534031 .0516605 68.41 0.000 3.432779 3.635284
    AbilitySC
    SUBJ .195256 .0321747 6.07 0.000 .1321948 .2583172
    _cons 3.15322 .0613774 51.37 0.000 3.032923 3.273517
    Abilitygap
    SUBJ .3168933 .0354582 8.94 0.000 .2473966 .3863901
    _cons -.3568302 .0793652 -4.50 0.000 -.5123831 -.2012774
    Hum
    abilitygap -2.402295 .383102 -6.27 0.000 -3.153162 -1.651429
    M1[school] 1 (constrained)
    SUBJ 1 (constrained)
    _cons .2856486 .4672304 0.61 0.541 -.6301062 1.201403
    Ecomath
    abilitygap -2.504259 .4187047 -5.98 0.000 -3.324906 -1.683613
    M1[school] .4628181 .1106909 4.18 0.000 .2458679 .6797682
    SUBJ 1.207185 .1039694 11.61 0.000 1.003408 1.410961
    _cons -.0857572 .3947757 -0.22 0.828 -.8595034 .6879891
    Stem
    abilitygap -2.013367 .3579137 -5.63 0.000 -2.714865 -1.311869
    M1[school] .6351652 .1046598 6.07 0.000 .4300358 .8402947
    SUBJ .9870099 .0893207 11.05 0.000 .8119445 1.162075
    _cons -.0352007 .3731809 -0.09 0.925 -.7666219 .6962204
    SUBJ
    female 1.023342 .3656752 2.80 0.005 .3066324 1.740053
    Stereotype .4980086 .2418418 2.06 0.039 .0240073 .9720098
    female#c.Stereotype
    F -1.053142 .3101316 -3.40 0.001 -1.660989 -.4452955
    var(M1[school]) .7269493 .4823096 .1980418 2.668403
    var(e.SUBJ) 7.165785 2.024763 4.118589 12.46749
    var(e.intrins) .7206302 .0493199 .6301679 .8240786
    var(e.Extr) .9109222 .0615937 .7978582 1.040008
    var(e.CosT) .8784698 .0593297 .7695534 1.002801
    var(e.Belonging) .9054402 .0612125 .7930746 1.033726
    var(e.AbilitySC) .7239465 .0495701 .633028 .8279231
    var(e.Abilitygap) .2489258 .0535419 .163299 .3794517
    var(e.Hum) 1.431831 .1371872 1.186687 1.727617
    var(e.Ecomath) .5157694 .1262512 .3192247 .8333253
    var(e.Stem) 1.009848 .113371 .810393 1.258394
    My question is: does Gsem still have a measurement and structural part as a SEM?
    Because in my idea the variables: intrins, Extr, CosT, Belonging, AbilitySC are indicators of the latent variable SUBJ , meanwhile the latent variable SUBJ affect Abilitygap, Ecomath, Stem, Hum.

    My question is: does Stata read them in the same way as mine or it took everything as an indicator of SUBJ?

    Many thanks in advance for your time
    Last edited by Chiara Tasselli; 07 Feb 2023, 12:05.
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