outlier.Rd
Compute outlying measures based on a proximity matrix.
# S3 method for default outlier(x, cls=NULL, ...) # S3 method for randomForest outlier(x, ...)
x | a proximity matrix (a square matrix with 1 on the diagonal
and values between 0 and 1 in the off-diagonal positions); or an object of
class |
---|---|
cls | the classes the rows in the proximity matrix belong to. If not given, all data are assumed to come from the same class. |
... | arguments for other methods. |
A numeric vector containing the outlying measures. The outlying measure of a case is computed as n / sum(squared proximity), normalized by subtracting the median and divided by the MAD, within each class.
set.seed(1) iris.rf <- randomForest(iris[,-5], iris[,5], proximity=TRUE) plot(outlier(iris.rf), type="h", col=c("red", "green", "blue")[as.numeric(iris$Species)])