\name{nSeScree} \alias{nSeScree} \title{ Standard Error Scree and Coeffcient of Determination Procedures to Determine the Number of Components/Factors} \description{ This function computes the \emph{seScree} (\eqn{S_{Y \bullet X}}) indices (Zoski and Jurs, 1996) and the coefficient of determination indices of Nelson (2005) \eqn{R^2} for determining the number of components/factors to retain. } \usage{ nSeScree(x, cor=TRUE, model="components", details=TRUE, r2limen=0.75, ...) } \arguments{ \item{x}{ numeric: eigenvalues.} \item{cor}{ logical: if \code{TRUE} computes eigenvalues from a correlation matrix, else from a covariance matrix} \item{model}{ character: \code{"components"} or \code{"factors"} } \item{details}{ logical: if \code{TRUE} also return detains about the computation for each eigenvalue.} \item{r2limen}{ numeric: criterion value retained for the coefficient of determination indices.} \item{...}{ variable: additionnal parameters to give to the \code{eigenComputes} and \code{cor} or \code{cov} functions} } \details{ The Zoski and Jurs \eqn{S_{Y \bullet X}} index is the standard error of the estimate (predicted) eigenvalues by the regression from the \eqn{(k+1, \ldots, p)} subsequent rank of the eigenvalues. The standard error is computed as: (1) \eqn{\qquad \qquad S_{Y \bullet X} = \sqrt{ \frac{(\lambda_k - \hat{\lambda}_k)^2} {p-2} } } \cr A value of \eqn{1/p} is choosen as the criteria to determine the number of components or factors to retain, \emph{p} corresponding to the number of variables. The Nelson \eqn{R^2} index is simply the multiple regresion coefficient of determination for the \eqn{k+1, \ldots, p} eigenvalues. Note that Nelson didn't give formal prescription for the criteria for this index. He only suggested that a value of 0.75 or more must be considered. More is to be done to explore adequate values. } \value{ \item{nFactors}{ numeric: number of components/factors retained by the seScree procedure. } \item{details}{ numeric: matrix of the details for each indices.} } \references{ Nasser, F. (2002). The performance of regression-based variations of the visual scree for determining the number of common factors. \emph{Educational and Psychological Measurement, 62(3)}, 397-419. Nelson, L. R. (2005). Some observations on the scree test, and on coefficient alpha. \emph{Thai Journal of Educational Research and Measurement, 3(1)}, 1-17. Zoski, K. and Jurs, S. (1993). Using multiple regression to determine the number of factors to retain in factor analysis. \emph{Multiple Linear Regression Viewpoints, 20}(1), 5-9. Zoski, K. and Jurs, S. (1996). An objective counterpart to the visuel scree test for factor analysis: the standard error scree. \emph{Educational and Psychological Measurement, 56}(3), 443-451. } \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/} } \seealso{ \code{\link{plotuScree}}, \code{\link{nScree}}, \code{\link{plotnScree}}, \code{\link{plotParallel}} } \examples{ ## SIMPLE EXAMPLE OF SESCREE AND R2 ANALYSIS data(dFactors) eig <- dFactors$Raiche$eigenvalues results <- nSeScree(eig) results plotuScree(eig, main=paste(results$nFactors[1], " or ", results$nFactors[2], " factors retained by the sescree and R2 procedures", sep="")) } \keyword{ multivariate }