impKNNa(x, method = "knn", k = 3, metric = "Aitchison", agg = "median", primitive = FALSE, normknn = TRUE, das = FALSE, adj = "median")
metric
should be chosen when dealing with compositional
data, the Euclidean metric
otherwise.If primitive
$==$ FALSE, a sequential search for the
$k$-nearest neighbors is applied for every missing value where all
information corresponding to the non-missing cells plus the information in
the variable to be imputed plus some additional information is available. If
primitive
$==$ TRUE, a search of the $k$-nearest neighbors
among observations is applied where in addition to the variable to be
imputed any further cells are non-missing.
If normknn
is TRUE (prefered option) the imputed cells from a nearest
neighbor method are adjusted with special adjustment factors (more details
can be found online (see the references)).
Hron, K. and Templ, M. and Filzmoser, P. (2010) Imputation of missing values for compositional data using classical and robust methods Computational Statistics and Data Analysis, vol 54 (12), pages 3095-3107.
impCoda
data(expenditures)
x <- expenditures
x[1,3]
x[1,3] <- NA
xi <- impKNNa(x)$xImp
xi[1,3]
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