outlier: Compute outlying measures

Description Usage Arguments Value See Also Examples

View source: R/outlier.R

Description

Compute outlying measures based on a proximity matrix.

Usage

1
2
3
4
## Default S3 method:
outlier(x, cls=NULL, ...)
## S3 method for class 'randomForest'
outlier(x, ...)

Arguments

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 randomForest, whose type is not regression.

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.

Value

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.

See Also

randomForest

Examples

1
2
3
4
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)])

iRF documentation built on May 2, 2019, 11:02 a.m.

Related to outlier in iRF...