## Abstract A number of simplified algorithms for carrying out __m__aximum __l__ikelihood __para__llel __fac__tor analysis (MLPARAFAC) for threeβway data affected by different error structures are described. The MLPARAFAC method was introduced to establish the theoretical basis to treat heterosceda
Maximum likelihood parallel factor analysis (MLPARAFAC)
β Scribed by Lorenzo Vega-Montoto; Peter D. Wentzell
- Publisher
- John Wiley and Sons
- Year
- 2003
- Tongue
- English
- Weight
- 267 KB
- Volume
- 17
- Category
- Article
- ISSN
- 0886-9383
- DOI
- 10.1002/cem.789
No coin nor oath required. For personal study only.
β¦ Synopsis
Abstract
Algorithms for carrying out maximum likelihood parallel factor analysis (MLPARAFAC) for threeβway data are described. These algorithms are based on the principle of alternating least squares, but differ from conventional PARAFAC algorithms in that they incorporate measurement error information into the trilinear decomposition. This information is represented in the form of an error covariance matrix. Four algorithms are discussed for dealing with different error structures in the threeβway array. The simplest of these treats measurements with nonβuniform measurement noise which is uncorrelated. The most general algorithm can analyze data with any type of noise correlation structure. The other two algorithms are simplifications of the general algorithm which can be applied with greater efficiency to cases where the noise is correlated only along one mode of the threeβway array. Simulation studies carried out under a variety of measurement error conditions were used for statistical validation of the maximum likelihood properties of the algorithms. The MLPARAFAC methods are also shown to produce more accurate results than PARAFAC under a variety of conditions. Copyright Β© 2003 John Wiley & Sons, Ltd.
π SIMILAR VOLUMES
The theoretical principles and practical implementation of a new method for multivariate data analysis, maximum likelihood principal component analysis (MLPCA), are described. MLCPA is an analog to principal component analysis (PCA) that incorporates information about measurement errors to develop P
General approaches to the fitting of binary response models to data collected in two-stage and other stratified sampling designs include weighted likelihood, pseudo-likelihood and full maximum likelihood. In previous work the authors developed the large sample theory and methodology for fitting of l