pmml.iForest {pmml} | R Documentation |
Generate PMML for an iForest object from the isofor package.
Description
Generate PMML for an iForest object from the isofor package.
Usage
## S3 method for class 'iForest'
pmml(
model,
model_name = "isolationForest_Model",
app_name = "SoftwareAG PMML Generator",
description = "Isolation Forest Model",
copyright = NULL,
model_version = NULL,
transforms = NULL,
missing_value_replacement = NULL,
anomaly_threshold = 0.6,
parent_invalid_value_treatment = "returnInvalid",
child_invalid_value_treatment = "asIs",
...
)
Arguments
model |
An iForest object from package isofor. |
model_name |
A name to be given to the PMML model. |
app_name |
The name of the application that generated the PMML. |
description |
A descriptive text for the Header element of the PMML. |
copyright |
The copyright notice for the model. |
model_version |
A string specifying the model version. |
transforms |
Data transformations. |
missing_value_replacement |
Value to be used as the 'missingValueReplacement' attribute for all MiningFields. |
anomaly_threshold |
Double between 0 and 1. Predicted values greater than this are classified as anomalies. |
parent_invalid_value_treatment |
Invalid value treatment at the top MiningField level. |
child_invalid_value_treatment |
Invalid value treatment at the model segment MiningField level. |
... |
Further arguments passed to or from other methods. |
Details
This function converts the iForest model object to the PMML format. The
PMML outputs the anomaly score as well as a boolean value indicating whether the
input is an anomaly or not. This is done by simply comparing the anomaly score with
anomaly_threshold
, a parameter in the pmml
function.
The iForest function automatically adds an extra level to all categorical variables,
labelled "."; this is kept in the PMML representation even though the use of this extra
factor in the predict function is unclear.
Value
PMML representation of the iForest
object.
Author(s)
Tridivesh Jena
References
See Also
Examples
## Not run:
# Build iForest model using iris dataset. Create an isolation
# forest with 10 trees. Sample 30 data points at a time from
# the iris dataset to fit the trees.
library(isofor)
data(iris)
mod <- iForest(iris, nt = 10, phi = 30)
# Convert to PMML:
mod_pmml <- pmml(mod)
## End(Not run)