roc_plot {fullROC} | R Documentation |
A function to plot ROC curves.
Description
A function to plot ROC curves.
Usage
roc_plot(cp, ca, group = NULL, byDR = FALSE, grayscale = FALSE, ...)
Arguments
cp |
A vector of cp id rates or frequencies. |
ca |
A vector of ca id rates or frequencies. |
group |
Grouping variable to indicate group membership. Will create an ROC curve and calculate AUC for each group. |
byDR |
Whether to order ids by diagnosticity ratios. Defaults to FALSE. |
grayscale |
Whether to produce the plot in grayscale. Defaults to FALSE. |
... |
Additional plotting parameters.
For example, users can change x-axis and y-axis labels using |
Value
Plot ROC curves and calculate AUCs as side effects.
References
Yueran Yang & Andrew Smith. (2020). "fullROC: An R package for generating and analyzing eyewitness-lineup ROC curves" doi: 10.13140/RG.2.2.20415.94885/1
Andrew Smith, Yueran Yang, & Gary Wells. (2020). "Distinguishing between investigator discriminability and eyewitness discriminability: A method for creating full receiver operating characteristic curves of lineup identification performance". Perspectives on Psychological Science, 15(3), 589-607. doi: 10.1177/1745691620902426
Examples
cpf1 <- c(100, 90, 80, 20, 10, 5)
caf1 <- c(6, 7, 15, 50, 75, 120)
roc_plot(cpf1, caf1)
cpf2 <- c(90, 40, 20)
caf2 <- c(10, 70, 80)
roc_plot(cpf2, caf2)
## plot two ROC curves
cpf <- c(cpf1, cpf2)
caf <- c(caf1, caf2)
group <- rep(letters[1:2], times = c(length(cpf1), length(cpf2) ) )
roc_plot(cpf, caf, group = group)