PipeOpmissMDA_PCA_MCA_FMAD | R Documentation |
Implements PCA, MCA, FMAD methods as mlr3 pipeline, more about methods missMDA_FMAD_MCA_PCA
.
Input and output channels are inherited from PipeOpImpute
.
The parameters include inherited from ['PipeOpImpute'], as well as:
id
:: character(1)
Identifier of resulting object, default "imput_missMDA_MCA_PCA_FMAD"
.
optimize_ncp
:: logical(1)
If TRUE, parameter number of dimensions, used to predict the missing values, will be optimized. If FALSE, by default ncp=2 is used, default TRUE
.
set_ncp
:: integer(1)
integer >0. Number of dimensions used by algortims. Used only if optimize_ncp = Flase, default 2
.
ncp.max
:: integer(1)
Number corresponding to the maximum number of components to test when optimize_ncp=TRUE, default 5
.
random.seed
:: integer(1)
Integer, by default random.seed = NULL implies that missing values are initially imputed by the mean of each variable. Other values leads to a random initialization, default NULL
.
maxiter
:: integer(1)
Maximal number of iteration in algorithm, default 998
.
coeff.ridge
:: double(1)
Value used in Regularized method, default 1
.
threshold
:: double(1)
Threshold for convergence, default 1e-6
.
method
:: character(1)
Method used in imputation algorithm, default 'Regularized'
.
out_fill
:: character(1)
Output log file location. If file already exists log message will be added. If NULL no log will be produced, default NULL
.
mlr3pipelines::PipeOp
-> mlr3pipelines::PipeOpImpute
-> missMDA_MCA_PCA_FMAD_imputation
new()
PipeOpMissMDA_PCA_MCA_FMAD$new( id = "impute_missMDA_MCA_PCA_FMAD_B", optimize_ncp = TRUE, set_ncp = 2, ncp.max = 5, random.seed = NULL, maxiter = 998, coeff.ridge = 1, threshold = 1e-06, method = "Regularized", out_file = NULL )
clone()
The objects of this class are cloneable with this method.
PipeOpMissMDA_PCA_MCA_FMAD$clone(deep = FALSE)
deep
Whether to make a deep clone.
# Using debug learner for example purpose graph <- PipeOpMissMDA_PCA_MCA_FMAD$new() %>>% LearnerClassifDebug$new() graph_learner <- GraphLearner$new(graph) # Task with NA set.seed(1) resample(tsk("pima"), graph_learner, rsmp("cv", folds = 3))
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