lavaan(model = NULL, data = NULL, ordered = NULL, sample.cov = NULL, sample.mean = NULL, sample.nobs = NULL, group = NULL, cluster = NULL, constraints = "", WLS.V = NULL, NACOV = NULL, slotOptions = NULL, slotParTable = NULL, slotSampleStats = NULL, slotData = NULL, slotModel = NULL, slotCache = NULL, ...)model.syntax for more information. Alternatively, a
    parameter table (eg. the output of the lavaanify() function) is also
    accepted.likelihood="normal", the user provided covariance matrix is
    internally rescaled by multiplying it with a factor (N-1)/N, to ensure
    that the covariance matrix has been divided by N. This can be turned off
    by setting the sample.cov.rescale argument to FALSE.model.syntax for more information."WLS";
    if the estimator is "DWLS", only the diagonal of this matrix will be
    used. For a multiple group analysis, a list with a weight matrix
    for each group. The elements of the weight matrix should be in the
    following order (if all data is continuous): first the means (if a
    meanstructure is involved), then the lower triangular elements of the
    covariance matrix including the diagonal, ordered column by column. In
    the categorical case: first the thresholds (including the means for
    continuous variables), then the slopes (if any), the variances of
    continuous variables (if any), and finally the lower triangular elements
    of the correlation/covariance matrix excluding the diagonal, ordered
    column by column.WLS.V
    argument for information about the order of the elements.lavOptions for a complete list.lavaan, for which several methods
  are available, including a summary method.
cfa, sem, growth
# The Holzinger and Swineford (1939) example
HS.model <- ' visual  =~ x1 + x2 + x3
              textual =~ x4 + x5 + x6
              speed   =~ x7 + x8 + x9 '
fit <- lavaan(HS.model, data=HolzingerSwineford1939,
              auto.var=TRUE, auto.fix.first=TRUE,
              auto.cov.lv.x=TRUE)
summary(fit, fit.measures=TRUE)
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