Probably the most popular factor retention criterion. Kaiser and Guttman suggested to retain as many factors as there are sample eigenvalues greater than 1. This is why the criterion is also known as eigenvalues-greater-than-one rule.
KGC(
x,
eigen_type = c("PCA", "SMC", "EFA"),
use = c("pairwise.complete.obs", "all.obs", "complete.obs", "everything",
"na.or.complete"),
cor_method = c("pearson", "spearman", "kendall"),
n_factors = 1,
...
)
A list of class KGC containing
A vector containing the eigenvalues found with PCA.
A vector containing the eigenvalues found with SMCs.
A vector containing the eigenvalues found with EFA.
The number of factors to retain according to the Kaiser- Guttmann criterion with PCA eigenvalues type.
The number of factors to retain according to the Kaiser- Guttmann criterion with SMC eigenvalues type.
The number of factors to retain according to the Kaiser- Guttmann criterion with EFA eigenvalues type.
A list of the settings used.
data.frame or matrix. Dataframe or matrix of raw data or matrix with correlations.
character. On what the eigenvalues should be found. Can be either "PCA", "SMC", or "EFA", or some combination of them. If using "PCA", the diagonal values of the correlation matrices are left to be 1. If using "SMC", the diagonal of the correlation matrices is replaced by the squared multiple correlations (SMCs) of the indicators. If using "EFA", eigenvalues are found on the correlation matrices with the final communalities of an exploratory factor analysis solution (default is principal axis factoring extracting 1 factor) as diagonal.
character. Passed to stats::cor
if raw
data is given as input. Default is "pairwise.complete.obs".
character. Passed to stats::cor
.
Default is "pearson".
numeric. Number of factors to extract if "EFA" is included in
eigen_type
. Default is 1.
Additional arguments passed to EFA
. For example,
to change the extraction method (PAF is default).
Originally, the Kaiser-Guttman criterion was intended for the use
with prinicpal components, hence with eigenvalues derived from the original
correlation matrix. This can be done here by setting eigen_type
to
"PCA". However, it is well-known that this criterion is often inaccurate and
that it tends to overestimate the number of factors, especially for unidimensional
or orthogonal factor structures (e.g., Zwick & Velicer, 1986).
The criterion's inaccuracy in these cases is somewhat addressed if it is
applied on the correlation matrix with communalities in the diagonal, either
initial communalities estimated from SMCs (done setting eigen_type
to
"SMC") or final communality estimates from an EFA (done setting eigen_type
to "EFA"; see Auerswald & Moshagen, 2019). However, although this variant
of the KGC is more accurate in some cases compared to the traditional KGC, it
is at the same time less accurate than the PCA-variant in other cases, and it
is still often less accurate than other factor retention methods, for
example parallel analysis (PARALLEL
), the Hull method
HULL
, or sequential \(chi^2\) model tests (SMT
;
see Auerswald & Moshagen, 2019).
The KGC
function can also be called together with other factor
retention criteria in the N_FACTORS
function.
Other factor retention criteria: CD
, EKC
,
HULL
, PARALLEL
, SMT
N_FACTORS
as a wrapper function for this and all the
above-mentioned factor retention criteria.
KGC(test_models$baseline$cormat, eigen_type = c("PCA", "SMC"))
Run the code above in your browser using DataLab