Revision c9833e40e7af6531f93c92bb4d2ab8a87541faad authored by Gilles Raiche on 09 December 2009, 00:00:00 UTC, committed by Gabor Csardi on 09 December 2009, 00:00:00 UTC
1 parent b6fe861
nFactors-parameters.rd
\name{nFactors-parameters}
\alias{nFactors-parameters}
\alias{nFactors-parameters}
\docType{package}
\title{ Argument and Value Parameters Common to the Different Functions Available in Package nFactors}
\description{
This help file describes the argument and value parameters used in the different functions
available in package \pkg{nFactors}. \cr
\emph{Arguments}:
\enumerate{
\item{\emph{adequacy}:}{ logical: if \code{TRUE} print the recovered
population matrix from the factor structure
(\code{structureSim})}
\item{\emph{alpha}:}{ numeric: statistical significance level
(\code{nBartlett, nBentler})}
\item{\emph{aparallel}:}{ numeric: results of a parallel analysis
(\code{nScree}) }
\item{\emph{cent}:}{ depreciated numeric (use quantile instead):
quantile of the distribution
(\code{moreStats, parallel})}
\item{\emph{communalities}:}{ character: initial values for communalities
(\code{"component"},
\code{"ginv"}, \code{"maxr"}, or \code{"multiple"})
(\code{iterativePrincipalAxis, principalAxis})}
\item{\emph{cor}:}{ logical: if \code{TRUE} computes eigenvalues
from a correlation
matrix, else from a covariance matrix
(\code{eigenComputes, nBartlett, nBentler,
nCng, nMreg, nScree, nSeScree})}
\item{\emph{correction}:}{ logical: if \code{TRUE} use a correction
for the degree
of freedom after the first eigenvalue (\code{nBartlett})}
\item{\emph{criteria}:}{ numeric: by default fixed at \eqn{\hat{\lambda}}.
When the \eqn{\lambda}s are computed prom a principal components
analysis on a correlation matrix, it correspons to the
usual Kaiser \eqn{\lambda >= 1} rule. On a covariance matrix
or from a factor analysis, it is simply the mean.
To apply the \eqn{\lambda >= 0} sometimes used with factor
analysis, fixed the criteria to \eqn{0} (\code{nScree})}
\item{\emph{details}:}{ logical: if \code{TRUE} also return detains about the
computation for each eigenvalues (\code{nBartlett, nBentler,
nCng, nMreg, structureSim})}
\item{\emph{diagCommunalities}:}{ logical: if \code{TRUE}, the correlation between
the initial
solution and the estimated one will use a
correlation of one in the diagonal.
If \code{FALSE} (default) the diagonal is not
used in the computation of
this correlation or covariance matrix
(\code{rRecovery})}
\item{\emph{eig}:}{ depreciated parameter (use x instead): Eigenvalues to analyse
(\code{nScree, plotParallel})}
\item{\emph{Eigenvalue}:}{ depreciated parameter (use x instead): eigenvalues to analyse
(\code{plotuScree})}
\item{\emph{fload}:}{ matrix: loadings of the factor structure (\code{structureSim})}
\item{\emph{graphic}:}{ logical: specific plot (\code{bentlerParameters, structureSim})}
\item{\emph{index}:}{ numeric: vector of the index of the selected indices
(\code{plot.structureSim, print.structureSim, summary.structureSim}}
\item{\emph{iterations}:}{ numeric: maximum number of iterations to obtain a solution
(\code{iterativePrincipalAxis})}
\item{\emph{legend}:}{ Logical indicator of the presence or not of a legend (\code{plotnScree, plotParallel}) }
\item{\emph{loadings}:}{ numeric: loadings from a factor analysis solution (\code{rRecovery, generateStructure})}
\item{\emph{log}:}{ logical: if \code{TRUE} does the minimization on the log values (\code{bentlerParameters, nBentler})}
\item{\emph{main}:}{ character: main title (\code{plotnScree, plotParallel, plotuScree, boxplot.structureSim,
plot.structureSim}) }
\item{\emph{maxPar}:}{ numeric: maximums for the coefficient of the linear trend to minimize
(\code{bentlerParameters, nBentler})}
\item{\emph{minPar}:}{ numeric: minimums for the coefficient of the linear trend to minimize
(\code{bentlerParameters, nBentler})}
\item{\emph{method}:}{ character: actually only \code{"giv"} is supplied to compute the
approximation of the communalities by maximum correlation
(\code{corFA, nCng, nMreg, nScree, nSeScree})}
\item{\emph{mjc}:}{ numeric: number of major factors (factors with practical significance)
(\code{generateStructure}) }
\item{\emph{pmjc}:}{ numeric: number of variables that load significantly on each major factor
(\code{generateStructure})}
\item{\emph{model}:}{ character: \code{"components"} or \code{"factors"} (\code{nScree, parallel, plotParallel,
plotuScree, structureSim, eigenBootParallel, eigenBootParallel})}
\item{\emph{N}:}{ numeric: number of subjects (\code{nBartlett, bentlerParameters, nBentler})}
\item{\emph{nboot}:}{ numeric: number of bootstrap samples (\code{eigenBootParallel}) }
\item{\emph{nFactors}:}{ numeric: number of components/factors to retained (\code{componentAxis,
iterativePrincipalAxis, principalAxis, bentlerParameters, boxplot.structureSim})}
\item{\emph{nScree}:}{ results of a previous nScree analysis (\code{plotnScree})}
\item{\emph{option}:}{ character: \code{"permutation"} or \code{"bootstrap"} (\code{eigenBootParallel})}
\item{\emph{object}:}{ nScree: an object of the class nScree \code{is.nScree, summary.nScree} }
\item{\emph{object}:}{ structureSim: an object of the class structureSim (\code{is.structureSim,
summary.structureSim})}
\item{\emph{parallel}:}{ numeric: vector of the result of a previous parallel analysis (\code{plotParallel})}
\item{\emph{pmjc}:}{ numeric: number of major loadings on each factor factors (\code{generateStructure}) }
\item{\emph{quantile}:}{ numeric: quantile that will be reported (\code{parallel, moreStats,
eigenBootParallel, structureSim}) }
\item{\emph{R}:}{ numeric: correlation or covariance matrix (\code{componentAxis, iterativePrincipalAxis,
principalAxis, principalComponents, rRecovery, corFA})}
\item{\emph{r2limen}:}{ numeric: R2 limen value for the R2 index of Nelson (\code{structureSim, nSeScree})}
\item{\emph{rep}:}{ numeric: number of replications of the correlation or the covariance matrix (default is 100) (\code{parallel})}
\item{\emph{reppar}:}{ numeric: number of replication for the parallel analysis (\code{structureSim})}
\item{\emph{repsim}:}{ numeric: number of replication of the matrix correlation simulation (\code{structureSim})}
\item{\emph{resParx}:}{ numeric: restriction on the \eqn{\alpha} coefficient (x) to graph the function to minimize
(\code{bentlerParameters})}
\item{\emph{resolution}:}{ numeric: resolution of the 3D graph (number of points from \eqn{\alpha} and from \eqn{\beta}).}
\item{\emph{resPary}:}{ numeric: restriction on the \eqn{\beta} coefficient (y) to graph the function to minimize
(\code{bentlerParameters})}
\item{\emph{sd}:}{ numeric: vector of standard deviations of the simulated variables
(for a parallel analysis on a covariance matrix) \code{parallel})}
\item{\emph{show}:}{ logical: if \code{TRUE} print the quantile choosen (\code{moreStats}) }
\item{\emph{subject}:}{ numeric: number of subjects (default is 100) (\code{parallel})}
\item{\emph{tolerance}:}{ numeric: minimal difference in the estimated communalities after a given iteration
(\code{iterativePrincipalAxis})}
\item{\emph{typePlot}:}{ character: plot the minimized function according to a 3D plot: \code{"wireframe"},
\code{"contourplot"} or \code{"levelplot"} (\code{bentlerParameters})}
\item{\emph{unique}:}{ numeric: loadings on the non significant variables on each major factor
(\code{generateStructure}) }
\item{\emph{upper}:}{ logical: if \code{TRUE} the upper diagonal is replaced with the lower
diagonal. If \code{FALSE}, lower diagonal is replaced with upper diagonal
(\code{diagReplace})}
\item{\emph{use}:}{ character: how to deal with missing values, same as the
parameter from the \code{corr} function (\code{eigenBootParallel}) }
\item{\emph{var}:}{ numeric: number of variables (default is 10) (\code{parallel, generateStructure}) }
\item{\emph{vLine}:}{ character: color of the vertical indicator line in the eigen boxplot
(\code{boxplot.structureSim})}
\item{\emph{x}:}{ numeric: a \code{vector} of eigenvalues, a \code{matrix} of
correlations or of covariances or a \code{data.frame} of data
(\code{eigenFrom, nBartlett, nCng, nMreg})}
\item{\emph{xlab}:}{ character: label of the x axis (\code{plotnScree, plotParallel, plotuScree,
boxplot.structureSim})}
\item{\emph{x}:}{ data.frame: data from which a correlation or covariance matrix will be obtained (\code{eigenBootParallel})}
\item{\emph{x}:}{ DEPRECIATED: (\code{plotParallel})}
\item{\emph{x}:}{ nScree: an object of the class nScree (\code{plot.nScree, print.nScree})}
\item{\emph{x}:}{ numeric: matrix (\code{makeCor})}
\item{\emph{x}:}{ numeric: matrix or data.frame (\code{moreStats})}
\item{\emph{x}:}{ structureSim: an object of the class structureSim (\code{boxplot.structureSim,
plot.structureSim, print.structureSim})}
\item{\emph{ylab}:}{ character: label of the y axis (\code{plotnScree, plotParallel, plotuScree,
boxplot.structureSim}) }
}
\emph{Values}:
\enumerate{
\item{\emph{cor}:}{ numeric: Pearson correlation between initial and recovered estimated
correlation or covariance matrix. Computions depend on the
logical value of the \code{communalities} argument (\code{rRecovery}) }
\item{\emph{details}:}{ numeric: matrix of the details for each indices (\code{nBartlett, bentlerParameters, nCng, nMreg})}
\item{\emph{difference}:}{ numeric: difference between initial and recovered estimated
correlation or covariance matrix (\code{rRecovery})}
\item{\emph{iterations}:}{ numeric: maximum number of iterations to obtain a solution (\code{iterativePrincipalAxis})}
\item{\emph{loadings}:}{ numeric: loadings of each variable on each component or factor retained (\code{componentAxis,
iterativePrincipalAxis, principalAxis, principalComponents}) }
\item{\emph{nFactors}:}{ numeric: vector of the number of components or factors retained by the
Bartlett, Anderson and Lawley procedures (\code{nBartlett, bentlerParameters, nCng, nMreg}) }
\item{\emph{R}: }{ numeric: correlation or covariance matrix (\code{diagReplace, rRecovery})}
\item{\emph{recoveredR}:}{ numeric: recovered estimated correlation or covariance matrix (\code{rRecovery}) }
\item{\emph{tolerance}:}{ numeric: minimal difference in the estimated communalities after a given iteration
(\code{iterativePrincipalAxis})}
\item{\emph{values}:}{ numeric: data.frame of information (\code{nScree, parallel, plotnScree, plotParallel,
plotuScree, structureSim})}
\item{\emph{values}:}{ numeric: data.frame of statistics (\code{moreStats}) }
\item{\emph{values}:}{ numeric: full matrix of correlation or covariance (\code{makeCor}) }
\item{\emph{values}:}{ numeric: variance of each component or factor (\code{iterativePrincipalAxis, principalComponents}) }
\item{\emph{values}:}{ data.frame: mean, median, quantile, standard deviation,
minimum and maximum of bootstrapped eigenvalues (\code{eigenBootParallel})}
\item{\emph{values}:}{ numeric: matrix of correlation or covariance with communalities in the diagonal (\code{corFA})}
\item{\emph{values}:}{ numeric: variance of each component or factor retained (\code{componentAxis, principalAxis}) }
\item{\emph{values}:}{ numeric: matrix factor structure (\code{generateStructure})}
\item{\emph{varExplained}:}{ numeric: variance explained by each component or factor retained (\code{componentAxis, iterativePrincipalAxis,
principalAxis, principalComponents}) }
\item{\emph{varExplained}:}{ numeric: cumulative variance explained by each component or factor retained (\code{componentAxis,
iterativePrincipalAxis, principalAxis, principalComponents}) }
}
}
\author{
Gilles Raiche \cr
Centre sur les Applications des Modeles de Reponses aux Items (CAMRI) \cr
Universite du Quebec a Montreal\cr
\email{raiche.gilles@uqam.ca}, \url{http://www.er.uqam.ca/nobel/r17165/} \cr \cr
David Magis \cr
Research Group of Quantitative Psychology and Individual Differences \cr
Katholieke Universiteit Leuven \cr
\email{David.Magis@psy.kuleuven.be}, \url{http://ppw.kuleuven.be/okp/home/}
}
\references{
Raiche, G., Riopel, M. and Blais, J.-G. (2006). \emph{Non graphical solutions
for the Cattell's scree test}. Paper presented at the International Annual
meeting of the Psychometric Society, Montreal.
[\url{http://www.er.uqam.ca/nobel/r17165/RECHERCHE/COMMUNICATIONS/}]
}
\seealso{
Other packages are also very useful for principal components and factor analysis.
The \emph{R} psychometric view is instructive at this point.
See \url{http://cran.stat.sfu.ca/web/views/Psychometrics.html} for further details.
}
\keyword{ package }
Computing file changes ...