Various parameters that control aspects of the `cforest' fit via its `control' argument.
cforest_unbiased(...)
cforest_classical(...)
cforest_control(teststat = "max",
                testtype = "Teststatistic",
                mincriterion = qnorm(0.9),
                savesplitstats = FALSE,
                ntree = 500, mtry = 5, replace = TRUE,
                fraction = 0.632, trace = FALSE, ...)An object of class ForestControl-class.
a character specifying the type of the test statistic to be applied.
a character specifying how to compute the distribution of the test statistic.
the value of the test statistic (for testtype == "Teststatistic"),
                       or 1 - p-value (for other values of testtype) that
                       must be exceeded in order to implement a split.
number of input variables randomly sampled as candidates 
               at each node for random forest like algorithms. Bagging, as special case 
               of a random forest without random input variable sampling, can 
               be performed by setting mtry either equal to NULL or 
               manually equal to the number of input variables.
a logical determining whether the process of standardized two-sample statistics for split point estimate is saved for each primary split.
number of trees to grow in a forest.
a logical indicating whether sampling of observations is done with or without replacement.
fraction of number of observations to draw without 
                   replacement (only relevant if replace = FALSE).
a logical indicating if a progress bar shall be printed while the forest grows.
additional arguments to be passed to 
                ctree_control.
All three functions return an object of class ForestControl-class
  defining hyper parameters to be specified via the control argument
  of cforest.
The arguments teststat, testtype and mincriterion
  determine how the global null hypothesis of independence between all input
  variables and the response is tested (see ctree). The 
  argument nresample is the number of Monte-Carlo replications to be
  used when testtype = "MonteCarlo".
A split is established when the sum of the weights in both daugther nodes
  is larger than minsplit, this avoids pathological splits at the
  borders. When stump = TRUE, a tree with at most two terminal nodes
  is computed.
The mtry argument regulates a random selection of mtry input 
  variables in each node. Note that here mtry is fixed to the value 5 by 
  default for merely technical reasons, while in randomForest 
  the default values for classification and regression vary with the number of input 
  variables. Make sure that mtry is defined properly before using cforest.
It might be informative to look at scatterplots of input variables against
  the standardized two-sample split statistics, those are available when
  savesplitstats = TRUE. Each node is then associated with a vector
  whose length is determined by the number of observations in the learning
  sample and thus much more memory is required.
The number of trees ntree can be increased for large numbers of input variables.
Function cforest_unbiased returns the settings suggested 
  for the construction of unbiased random forests (teststat = "quad", testtype = "Univ", 
    replace = FALSE) by Strobl et al. (2007)
  and is the default since version 0.9-90.
  Hyper parameter settings mimicing the behaviour of
  randomForest are available in
  cforest_classical which have been used as default up to
  version 0.9-14.
Please note that cforest, in contrast to 
  randomForest, doesn't grow trees of
  maximal depth. To grow large trees, set mincriterion = 0.
Carolin Strobl, Anne-Laure Boulesteix, Achim Zeileis and Torsten Hothorn (2007). Bias in Random Forest Variable Importance Measures: Illustrations, Sources and a Solution. BMC Bioinformatics, 8, 25. DOI: 10.1186/1471-2105-8-25