A General Framework for Multivariate Analysis with Optimal Scaling: The R Package aspect
In a series of papers De Leeuw developed a general framework for multivariate analysis with optimal scaling. The basic idea of optimal scaling is to transform the observed variables (categories) in terms of quantifications. In the approach presented here the multivariate data are collected into a multivariable. An <em>aspect</em> of a multivariable is a function that is used to measure how well the multivariable satisfies some criterion. Basically we can think of two different families of aspects which unify many well-known multivariate methods: Correlational aspects based on sums of correlations, eigenvalues and determinants which unify multiple regression, path analysis, correspondence analysis, nonlinear PCA, etc. Non-correlational aspects which linearize bivariate regressions and can be used for SEM preprocessing with categorical data. Additionally, other aspects can be established that do not correspond to classical techniques at all. By means of the R package aspect we provide a unified majorization-based implementation of this methodology. Using various data examples we will show the flexibility of this approach and how the optimally scaled results can be represented using graphical tools provided by the package.
Year of publication: |
2010-01-05
|
---|---|
Authors: | Mair, Patrick ; Leeuw, Jan de |
Published in: |
Journal of Statistical Software. - American Statistical Association. - Vol. 32.2010, i09
|
Publisher: |
American Statistical Association |
Saved in:
Saved in favorites
Similar items by person
-
An Introduction to the Special Volume on "Psychometrics in R''
Leeuw, Jan de, (2007)
-
Multidimensional Scaling Using Majorization: SMACOF in R
Leeuw, Jan de, (2009)
-
Isotone Optimization in R: Pool-Adjacent-Violators Algorithm (PAVA) and Active Set Methods
Leeuw, Jan de, (2009)
- More ...