owl (version 0.1.1)

score: Compute one of several loss metrics on a new data set

Description

This function is a unified interface to return various types of loss for a model fit with owl().

Usage

score(object, x, y, measure)

# S3 method for OwlGaussian score(object, x, y, measure = c("mse", "mae"))

# S3 method for OwlBinomial score(object, x, y, measure = c("mse", "mae", "deviance", "misclass", "auc"))

# S3 method for OwlMultinomial score(object, x, y, measure = c("mse", "mae", "deviance", "misclass"))

# S3 method for OwlPoisson score(object, x, y, measure = c("mse", "mae"))

Arguments

object

an object of class "Owl"

x

feature matrix

y

response

measure

type of target measure. "mse" returns mean squared error. "mae" returns mean absolute error, "misclass" returns misclassification rate, and "auc" returns area under the ROC curve.

Value

The measure along the regularization path depending on the value in measure.

Examples

Run this code
# NOT RUN {
x <- subset(infert, select = c("induced", "age", "pooled.stratum"))
y <- infert$case

fit <- owl(x, y, family = "binomial")
score(fit, x, y, measure = "auc")
# }

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