A general framework for finite mixtures of regression
models using the EM algorithm is implemented. The E-step and all
data handling are provided, while the M-step can be supplied by the
user to easily define new models. Existing drivers implement
mixtures of standard linear models, generalized linear models and
model-based clustering.
Version: |
2.3-18 |
Depends: |
R (≥ 2.15.0), lattice |
Imports: |
graphics, grid, grDevices, methods, modeltools (≥ 0.2-16), nnet, stats, stats4, utils |
Suggests: |
actuar, codetools, diptest, Ecdat, ellipse, gclus, glmnet, lme4 (≥ 1.1), MASS, mgcv (≥ 1.8-0), mlbench, multcomp, mvtnorm, SuppDists, survival |
Published: |
2022-06-07 |
Author: |
Bettina Gruen
[aut, cre],
Friedrich Leisch
[aut],
Deepayan Sarkar
[ctb],
Frederic Mortier [ctb],
Nicolas Picard
[ctb] |
Maintainer: |
Bettina Gruen <Bettina.Gruen at R-project.org> |
License: |
GPL-2 | GPL-3 [expanded from: GPL (≥ 2)] |
NeedsCompilation: |
no |
Citation: |
flexmix citation info |
Materials: |
NEWS |
In views: |
Cluster, Environmetrics, Psychometrics |
CRAN checks: |
flexmix results |