https://github.com/cran/cutpointr
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Tip revision: 62a2af802192e86b60cc64dfd458d581a064c0c7 authored by Christian Thiele on 13 April 2018, 12:16:17 UTC
version 0.7.3
Tip revision: 62a2af8
misclassification_cost.Rd
% Generated by roxygen2: do not edit by hand
% Please edit documentation in R/metrics.R
\name{misclassification_cost}
\alias{misclassification_cost}
\title{Calculate the misclassification cost}
\usage{
misclassification_cost(tp, fp, tn, fn, cost_fp = 1, cost_fn = 1, ...)
}
\arguments{
\item{tp}{(numeric) number of true positives.}

\item{fp}{(numeric) number of false positives.}

\item{tn}{(numeric) number of true negatives.}

\item{fn}{(numeric) number of false negatives.}

\item{cost_fp}{(numeric) the cost of a false positive}

\item{cost_fn}{(numeric) the cost of a false negative}

\item{...}{for capturing additional arguments passed by method.}
}
\description{
Calculate the misclassification cost from
true positives, false positives, true negatives and false negatives.
The inputs must be vectors of equal length. \cr \cr
misclassification_cost = cost_fp * fp + cost_fn * fn \cr
}
\examples{
misclassification_cost(10, 5, 20, 10, cost_fp = 1, cost_fn = 5)
misclassification_cost(c(10, 8), c(5, 7), c(20, 12), c(10, 18),
                       cost_fp = 1, cost_fn = 5)
}
\seealso{
Other metric functions: \code{\link{F1_score}},
  \code{\link{abs_d_ppv_npv}},
  \code{\link{abs_d_sens_spec}}, \code{\link{accuracy}},
  \code{\link{cohens_kappa}}, \code{\link{cutpoint}},
  \code{\link{false_omission_rate}}, \code{\link{npv}},
  \code{\link{odds_ratio}}, \code{\link{p_chisquared}},
  \code{\link{plr}}, \code{\link{ppv}},
  \code{\link{precision}}, \code{\link{prod_ppv_npv}},
  \code{\link{prod_sens_spec}}, \code{\link{recall}},
  \code{\link{risk_ratio}}, \code{\link{sensitivity}},
  \code{\link{specificity}}, \code{\link{sum_ppv_npv}},
  \code{\link{sum_sens_spec}}, \code{\link{total_utility}},
  \code{\link{tpr}}, \code{\link{tp}}, \code{\link{youden}}
}
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