Generate Tree Structures with Hierarchical Clustering
hclust2(
matrix,
distance = "euclidean",
method = "complete",
use_missing = "pairwise.complete.obs"
)A hclust object.
A numeric matrix, or data frame.
A string of distance measure to be used. This must be one of
"euclidean", "maximum", "manhattan", "canberra", "binary" or
"minkowski". Correlation coefficient can be also used, including
"pearson", "spearman" or "kendall". In this way, 1 - cor will be used
as the distance. In addition, you can also provide a dist
object directly or a function return a dist object. Use
NULL, if you don't want to calculate the distance.
A string of the agglomeration method to be used. This should be
(an unambiguous abbreviation of) one of "ward.D", "ward.D2", "single",
"complete", "average" (= UPGMA), "mcquitty" (= WPGMA), "median" (=
WPGMC) or "centroid" (= UPGMC). You can also provide a function which
accepts the calculated distance (or the input matrix if distance is NULL)
and returns a hclust object. Alternative, you can supply
an object which can be coerced to hclust.
An optional character string giving a method for computing
covariances in the presence of missing values. This must be (an abbreviation
of) one of the strings "everything", "all.obs", "complete.obs",
"na.or.complete", or "pairwise.complete.obs". Only used when distance
is a correlation coefficient string.
hclust2(dist(USArrests), method = "ward.D")
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