accuracy: Compute accuracy

View source: R/accuracy.R

accuracyR Documentation

Compute accuracy

Description

Compute the empirical accuracy of a method from a series of tests. In this context, the accuracy is the average proportion of the the total population that was correctly placed within the cluster (for the outbreak regions) or outside the cluster (for the null regions). The function requires the null test statistics, the results from the observed data sets (i.e., the maximum test statistic and most likely cluster from each data set), the true hotspot locations, and the vector of population sizes for each region. See Details.

Usage

accuracy(tnull, tdata, hotspot, pop, alpha = c(0.05, 0.01))

Arguments

tnull

The set of null test statistics

tdata

The list of maximum test statistics (tmax) and most likely cluster (mlc) for each simulated data set.

hotspot

A vector containing the hotspot indices for the current data set.

pop

A vector with the populations associated with each region.

alpha

The type I error rate. Default is c(0.05, 0.01).

Value

A vector of specificity values.

Examples

tnull = 1:99
tdata = list(list(tmax = 96, mlc = c(50, 51)),
             list(tmax = 101, mlc = c(48, 57)))
accuracy(tnull, tdata, 50, pop = rep(10, 100))

jpfrench81/neastbenchmark documentation built on July 26, 2023, 3:07 p.m.