k-Nearest Neighbour Imputation based on a variation of the Gower Distance for numerical, categorical, ordered and semi-continous variables.
kNN(data, variable = colnames(data), metric = NULL, k = 5,
dist_var = colnames(data), weights = NULL, numFun = median,
catFun = maxCat, makeNA = NULL, NAcond = NULL, impNA = TRUE,
donorcond = NULL, mixed = vector(), mixed.constant = NULL,
trace = FALSE, imp_var = TRUE, imp_suffix = "imp", addRandom = FALSE,
useImputedDist = TRUE, weightDist = FALSE)
data.frame or matrix
variables where missing values should be imputed
metric to be used for calculating the distances between
number of Nearest Neighbours used
names or variables to be used for distance calculation
weights for the variables for distance calculation
function for aggregating the k Nearest Neighbours in the case of a numerical variable
function for aggregating the k Nearest Neighbours in the case of a categorical variable
list of length equal to the number of variables, with values, that should be converted to NA for each variable
list of length equal to the number of variables, with a condition for imputing a NA
TRUE/FALSE whether NA should be imputed
condition for the donors e.g. ">5"
names of mixed variables
vector with length equal to the number of semi-continuous variables specifying the point of the semi-continuous distribution with non-zero probability
TRUE/FALSE if additional information about the imputation process should be printed
TRUE/FALSE if a TRUE/FALSE variables for each imputed variable should be created show the imputation status
suffix for the TRUE/FALSE variables showing the imputation status
TRUE/FALSE if an additional random variable should be added for distance calculation
TRUE/FALSE if an imputed value should be used for distance calculation for imputing another variable. Be aware that this results in a dependency on the ordering of the variables.
TRUE/FALSE if the distances of the k nearest neighbours should be used as weights in the aggregation step
the imputed data set.
The function sampleCat samples with probabilites corresponding to the occurrence of the level in the NNs. The function maxCat chooses the level with the most occurrences and random if the maximum is not unique. The function gowerD is used by kNN to compute the distances for numerical, factor ordered and semi-continous variables. The function which.minN is used by kNN.
A. Kowarik, M. Templ (2016) Imputation with R package VIM. Journal of Statistical Software, 74(7), 1-16.
# NOT RUN {
data(sleep)
kNN(sleep)
library(laeken)
kNN(sleep, numFun = weightedMean, weightDist=TRUE)
# }
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