Conduct a Correlation/Covariance Structure Analysis with WLS
It fits a correlation or covariance structure with
weighted least squares (WLS) estimation method where the inverse of the asymptotic covariance matrix is
used as the weight matrix. tssem2
conducts the second stage
analysis of the two-stage structural equation modeling (TSSEM). tssem2
is a wrapper of wls
.
wls(Cov, aCov, n, RAM=NULL, Amatrix=NULL, Smatrix=NULL, Fmatrix=NULL, diag.constraints=FALSE, cor.analysis=TRUE, intervals.type=c("z","LB"), mx.algebras=NULL, model.name=NULL, suppressWarnings=TRUE, silent=TRUE, run=TRUE, ...) tssem2(tssem1.obj, RAM=NULL, Amatrix=NULL, Smatrix=NULL, Fmatrix=NULL, diag.constraints=FALSE, intervals.type=c("z", "LB"), mx.algebras=NULL, model.name=NULL, suppressWarnings=TRUE, silent=TRUE, run=TRUE, ...)
tssem1.obj |
An object of either class
|
Cov |
A p x p sample correlation/covariance matrix where p is the number of variables. |
aCov |
A p* x p* asymptotic sampling covariance
matrix of either |
n |
Sample size. |
RAM |
A RAM object including a list of matrices of the model
returned from |
Amatrix |
If |
Smatrix |
If |
Fmatrix |
A filter matrix in the RAM specification with
|
diag.constraints |
Logical. This argument is ignored when
|
cor.analysis |
Logical. Analysis of correlation or covariance structure. If |
intervals.type |
Either |
mx.algebras |
A list of |
model.name |
A string for the model name in
|
suppressWarnings |
Logical. If |
silent |
Logical. An argument to be passed to |
run |
Logical. If |
... |
Further arguments to be passed to |
An object of class wls
with a list of
call |
The matched call |
Cov |
Input data of either a covariance or correlation matrix |
asyCov |
The asymptotic covariance matrix of the input data |
noObservedStat |
Number of observed statistics |
n |
Sample size |
cor.analysis |
logical |
noConstraints |
Number of constraints imposed on S |
indepModelChisq |
Chi-square statistic of the independent model
returned by |
indepModelDf |
Degrees of freedom of the independent model returned
by |
mx.fit |
A fitted object returned from
|
If the input is a list of tssem1.obj
, it returns a list of
results for each cluster.
Mike W.-L. Cheung <mikewlcheung@nus.edu.sg>
Bentler, P.M., & Savalei, V. (2010). Analysis of correlation structures: current status and open problems. In Kolenikov, S., Thombs, L., & Steinley, D. (Eds.). Recent Methodological Developments in Social Science Statistics (pp. 1-36). Hoboken, NJ: Wiley.
Cheung, M. W.-L. (2010). Fixed-effects meta-analyses as multiple-group structural equation models. Structural Equation Modeling, 17, 481-509.
Cheung, M. W.-L. (2014). Fixed- and random-effects meta-analytic structural equation modeling: Examples and analyses in R. Behavior Research Methods, 46, 29-40.
Cheung, M. W.-L., & Chan, W. (2005). Meta-analytic structural equation modeling: A two-stage approach. Psychological Methods, 10, 40-64.
Cheung, M. W.-L., & Chan, W. (2009). A two-stage approach to synthesizing covariance matrices in meta-analytic structural equation modeling. Structural Equation Modeling, 16, 28-53.
Joreskog, K. G., Sorbom, D., Du Toit, S., & Du Toit, M. (1999). LISREL 8: New Statistical Features. Chicago: Scientific Software International.
McArdle, J. J., & MacDonald, R. P. (1984). Some algebraic properties of the Reticular Action Model for moment structures. British Journal of Mathematical and Statistical Psychology, 37, 234-251.
#### Analysis of correlation structure R1.labels <- c("a1", "a2", "a3", "a4") R1 <- matrix(c(1.00, 0.22, 0.24, 0.18, 0.22, 1.00, 0.30, 0.22, 0.24, 0.30, 1.00, 0.24, 0.18, 0.22, 0.24, 1.00), ncol=4, nrow=4, dimnames=list(R1.labels, R1.labels)) n <- 1000 acovR1 <- asyCov(R1, n) #### One-factor CFA model using lavaan specification model1 <- "f =~ a1 + a2 + a3 + a4" RAM1 <- lavaan2RAM(model1, obs.variables=R1.labels) wls.fit1a <- wls(Cov=R1, aCov=acovR1, n=n, RAM=RAM1, cor.analysis=TRUE, intervals="LB") summary(wls.fit1a) ## One-factor CFA model using RAM specification (A1 <- cbind(matrix(0, nrow=5, ncol=4), matrix(c("0.2*a1","0.2*a2","0.2*a3","0.2*a4",0), ncol=1))) (S1 <- Diag(c("0.2*e1","0.2*e2","0.2*e3","0.2*e4",1))) ## The first 4 variables are observed while the last one is latent. (F1 <- create.Fmatrix(c(1,1,1,1,0), name="F1")) wls.fit1b <- wls(Cov=R1, aCov=acovR1, n=n, Fmatrix=F1, Smatrix=S1, Amatrix=A1, cor.analysis=TRUE, intervals="LB") summary(wls.fit1b) #### Multiple regression analysis using lavaan specification R2.labels <- c("y", "x1", "x2") R2 <- matrix(c(1.00, 0.22, 0.24, 0.22, 1.00, 0.30, 0.24, 0.30, 1.00, 0.18, 0.22, 0.24), ncol=3, nrow=3, dimnames=list(R2.labels, R2.labels)) acovR2 <- asyCov(R2, n) model2 <- "y ~ x1 + x2 ## Variances of x1 and x2 are 1 x1 ~~ 1*x1 x2 ~~ 1*x2 ## x1 and x2 are correlated x1 ~~ x2" RAM2 <- lavaan2RAM(model2, obs.variables=R2.labels) wls.fit2a <- wls(Cov=R2, aCov=acovR2, n=n, RAM=RAM2, cor.analysis=TRUE, intervals="LB") summary(wls.fit2a) #### Multiple regression analysis using RAM specification ## A2: Regression coefficents # y x1 x2 # y F T T # x1 F F F # x2 F F F (A2 <- mxMatrix("Full", ncol=3, nrow=3, byrow=TRUE, free=c(FALSE, rep(TRUE, 2), rep(FALSE, 6)), name="A2")) ## S2: Covariance matrix of free parameters # y x1 x2 # y T F F # x1 F F F # x2 F T F (S2 <- mxMatrix("Symm", ncol=3, nrow=3, values=c(0.2,0,0,1,0.2,1), labels=c("Var_y", NA, NA, NA, "Cov_x1_x2", NA), free=c(TRUE,FALSE,FALSE,FALSE,TRUE,FALSE), name="S2")) ## F may be ignored as there is no latent variable. wls.fit2b <- wls(Cov=R2, aCov=acovR2, n=n, Amatrix=A2, Smatrix=S2, cor.analysis=TRUE, intervals="LB") summary(wls.fit2b) #### Analysis of covariance structure using lavaan specification R3.labels=c("a1", "a2", "a3", "a4") R3 <- matrix(c(1.50, 0.22, 0.24, 0.18, 0.22, 1.60, 0.30, 0.22, 0.24, 0.30, 1.80, 0.24, 0.18, 0.22, 0.24, 1.30), ncol=4, nrow=4, dimnames=list(R3.labels, R3.labels)) n <- 1000 acovS3 <- asyCov(R3, n, cor.analysis=FALSE) model3 <- "f =~ a1 + a2 + a3 + a4" RAM3 <- lavaan2RAM(model3, obs.variables=R3.labels) wls.fit3a <- wls(Cov=R3, aCov=acovS3, n=n, RAM=RAM3, cor.analysis=FALSE) summary(wls.fit3a) #### Analysis of covariance structure using RAM specification (A3 <- cbind(matrix(0, nrow=5, ncol=4), matrix(c("0.2*a1","0.2*a2","0.2*a3","0.2*a4",0),ncol=1))) (S3 <- Diag(c("0.2*e1","0.2*e2","0.2*e3","0.2*e4",1))) F3 <- c(TRUE,TRUE,TRUE,TRUE,FALSE) (F3 <- create.Fmatrix(F3, name="F3", as.mxMatrix=FALSE)) wls.fit3b <- wls(Cov=R3, aCov=acovS3, n=n, Amatrix=A3, Smatrix=S3, Fmatrix=F3, cor.analysis=FALSE) summary(wls.fit3b)
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