local.models {plspm}R Documentation

Calculates PLS-PM for global and local models

Description

Calculates PLS-PM for global and local models from a given partition.

Usage

  local.models(pls, y, scheme=NULL, scaled=NULL, boot.val=FALSE, br=NULL)

Arguments

pls An object of class "plspm"
y One object of the following classes: "rebus", "integer", or "factor", that provides the class partitions.
scheme Possible values are "centroid", "factor" and "path".
scaled A logical value indicating whether scaling data is performed.
boot.val A logical value indicating whether bootstrap validation is performed (FALSE by default).
br An integer indicating the number bootstrap resamples. Used only when boot.val=TRUE.

Details

The function local.models calculates PLS-PM for the global model (i.e. over all observations) as well as PLS-PM for local models (i.e. observations of different partitions).
When y is an object of class "rebus", the function local.models is applied to the classes obtained from the REBUS algorithm.
When y is an integer vector or a factor, the values or levels are assumed to represent the group to which each observation belongs. In this case, the function local.models calculates PLS-PM for the global model, as well as PLS-PM for each group (local models).
If scheme=NULL, then the original scheme from the object pls will be taken.
If scaled=NULL, then the original scaled from the object pls will be taken.
When bootstrap validation is performed, the default number of re-samples is 200. However, br can be specified in a range from 50 to 500.

Value

An object of class "local.models", basically a list of length k+1, where k is the number of classes. The list contains the following elements:

glob.model PLS-PM of the global model
loc.model.1 PLS-PM of segment (class) 1
loc.model.2 PLS-PM of segment (class) 2
loc.model.k PLS-PM of segment (class) k

Each element of the list is an object of class "plspm". Thus, in order to examine the results for each local model, it is necessary to use the summary function. See examples below.
Note that if scheme and/or scaled differ from the original arguments of pls, the results obtained in local.models will be different from those obtained in pls as well as in y (if it is of class "rebus").

Author(s)

Laura Trinchera, Gaston Sanchez

See Also

rebus.pls

Examples

  ## Not run: 
  ## example of rebus analysis
  data(sim.data)
  ## First compute GLOBAL model
  sim.mat <- matrix(c(0,0,0,0,0,0,1,1,0),3,3,byrow=TRUE)
  dimnames(sim.mat) <- list(c("Price","Quality","Satisfaction"),
                            c("Price","Quality","Satisfaction"))
  sim.sets <- list(c(1,2,3,4,5),c(6,7,8,9,10),c(11,12,13)) 
  sim.mod <- c("A","A","A")  ## reflective indicators
  sim.global <- plspm(sim.data, inner.mat=sim.mat, 
                      sets=sim.sets, modes=sim.mod)
  sim.global
  ## Then compute cluster on residual from global model
  sim.res.clus <- res.clus(sim.global)
  ## To conclude run iteration algorithm
  rebus.sim <- it.reb(sim.global, sim.res.clus, nk=2, 
                     stop.crit = 0.005, iter.max = 100 )
  ## Computation of local models 
  local.rebus <- local.models(sim.global, rebus.sim)
  ## Display plspm summary for first local model 
  summary(local.rebus$loc.model.1)
  
## End(Not run)

[Package plspm version 0.1-4 Index]