daisy
Dissimilarity Matrix Calculation
Description
Compute all the pairwise dissimilarities (distances) between observations in the data set. The original variables may be of mixed types. In that case, or whenever metric = "gower"
is set, a generalization of Gower's formula is used, see ‘Details’ below.
Usage
daisy(x, metric = c("euclidean", "manhattan", "gower"), stand = FALSE, type = list(), weights = rep.int(1, p), warnBin = warnType, warnAsym = warnType, warnConst = warnType, warnType = TRUE)
Arguments
x | numeric matrix or data frame, of dimension n x p, say. Dissimilarities will be computed between the rows of |
metric | character string specifying the metric to be used. The currently available options are “Gower's distance” is chosen by metric |
stand | logical flag: if TRUE, then the measurements in If not all columns of |
type | list for specifying some (or all) of the types of the variables (columns) in |
weights | an optional numeric vector of length p(= |
warnBin, warnAsym, warnConst | logicals indicating if the corresponding type checking warnings should be signalled (when found). |
warnType | logical indicating if all the type checking warnings should be active or not. |
Details
The original version of daisy
is fully described in chapter 1 of Kaufman and Rousseeuw (1990). Compared to dist
whose input must be numeric variables, the main feature of daisy
is its ability to handle other variable types as well (e.g. nominal, ordinal, (a)symmetric binary) even when different types occur in the same data set.
The handling of nominal, ordinal, and (a)symmetric binary data is achieved by using the general dissimilarity coefficient of Gower (1971). If x
contains any columns of these data-types, both arguments metric
and stand
will be ignored and Gower's coefficient will be used as the metric. This can also be activated for purely numeric data by metric = "gower"
. With that, each variable (column) is first standardized by dividing each entry by the range of the corresponding variable, after subtracting the minimum value; consequently the rescaled variable has range [0,1], exactly.
Note that setting the type to symm
(symmetric binary) gives the same dissimilarities as using nominal (which is chosen for non-ordered factors) only when no missing values are present, and more efficiently.
Note that daisy
signals a warning when 2-valued numerical variables do not have an explicit type
specified, because the reference authors recommend to consider using "asymm"
; the warning may be silenced by warnBin = FALSE
.
In the daisy
algorithm, missing values in a row of x are not included in the dissimilarities involving that row. There are two main cases,
-
If all variables are interval scaled (and
metric
is not"gower"
), the metric is "euclidean", and n_g is the number of columns in which neither row i and j have NAs, then the dissimilarity d(i,j) returned is sqrt(p/n_g) (p=ncol(x)) times the Euclidean distance between the two vectors of length n_g shortened to exclude NAs. The rule is similar for the "manhattan" metric, except that the coefficient is p/n_g. If n_g = 0, the dissimilarity is NA. -
When some variables have a type other than interval scaled, or if
metric = "gower"
is specified, the dissimilarity between two rows is the weighted mean of the contributions of each variable. Specifically,d_ij = d(i,j) = sum(k=1:p; w_k delta(ij;k) d(ij,k)) / sum(k=1:p; w_k delta(ij;k)).
In other words, d_ij is a weighted mean of d(ij,k) with weights w_k delta(ij;k), where w_k
= weigths[k]
, delta(ij;k) is 0 or 1, and d(ij,k), the k-th variable contribution to the total distance, is a distance betweenx[i,k]
andx[j,k]
, see below.The 0-1 weight delta(ij;k) becomes zero when the variable
x[,k]
is missing in either or both rows (i and j), or when the variable is asymmetric binary and both values are zero. In all other situations it is 1.The contribution d(ij,k) of a nominal or binary variable to the total dissimilarity is 0 if both values are equal, 1 otherwise. The contribution of other variables is the absolute difference of both values, divided by the total range of that variable. Note that “standard scoring” is applied to ordinal variables, i.e., they are replaced by their integer codes
1:K
. Note that this is not the same as using their ranks (since there typically are ties).As the individual contributions d(ij,k) are in [0,1], the dissimilarity d_ij will remain in this range. If all weights w_k delta(ij;k) are zero, the dissimilarity is set to
NA
.
Value
an object of class "dissimilarity"
containing the dissimilarities among the rows of x
. This is typically the input for the functions pam
, fanny
, agnes
or diana
. For more details, see dissimilarity.object
.
Background
Dissimilarities are used as inputs to cluster analysis and multidimensional scaling. The choice of metric may have a large impact.
Author(s)
Anja Struyf, Mia Hubert, and Peter and Rousseeuw, for the original version.
Martin Maechler improved the NA
handling and type
specification checking, and extended functionality to metric = "gower"
and the optional weights
argument.
References
Gower, J. C. (1971) A general coefficient of similarity and some of its properties, Biometrics 27, 857–874.
Kaufman, L. and Rousseeuw, P.J. (1990) Finding Groups in Data: An Introduction to Cluster Analysis. Wiley, New York.
Struyf, A., Hubert, M. and Rousseeuw, P.J. (1997) Integrating Robust Clustering Techniques in S-PLUS, Computational Statistics and Data Analysis 26, 17–37.
See Also
dissimilarity.object
, dist
, pam
, fanny
, clara
, agnes
, diana
.
Examples
data(agriculture) ## Example 1 in ref: ## Dissimilarities using Euclidean metric and without standardization d.agr <- daisy(agriculture, metric = "euclidean", stand = FALSE) d.agr as.matrix(d.agr)[,"DK"] # via as.matrix.dist(.) ## compare with as.matrix(daisy(agriculture, metric = "gower")) data(flower) ## Example 2 in ref summary(dfl1 <- daisy(flower, type = list(asymm = 3))) summary(dfl2 <- daisy(flower, type = list(asymm = c(1, 3), ordratio = 7))) ## this failed earlier: summary(dfl3 <- daisy(flower, type = list(asymm = c("V1", "V3"), symm= 2, ordratio= 7, logratio= 8)))
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Licensed under the GNU General Public License.