doi:10.1080/10543406.2017.1377728> provide two theoretical methods (influence function and local influence) based on the area under the receiver operating characteristic curve (AUC) to quantify the numerical impact of each observation to the overall AUC. Alternative graphical tools, cumulative lift charts, are proposed to reveal the existences and approximate locations of those influential observations through data visualization.">

influenceAUC: Identify Influential Observations in Binary Classification (original) (raw)

Ke, B. S., Chiang, A. J., & Chang, Y. C. I. (2018) <doi:10.1080/10543406.2017.1377728> provide two theoretical methods (influence function and local influence) based on the area under the receiver operating characteristic curve (AUC) to quantify the numerical impact of each observation to the overall AUC. Alternative graphical tools, cumulative lift charts, are proposed to reveal the existences and approximate locations of those influential observations through data visualization.

Version: 0.1.2
Imports: dplyr, geigen, ggplot2, ggrepel, methods, ROCR
Published: 2020-05-30
DOI: 10.32614/CRAN.package.influenceAUC
Author: Bo-Shiang Ke [cre, aut, cph], Yuan-chin Ivan Chang [aut], Wen-Ting Wang [aut]
Maintainer: Bo-Shiang Ke
BugReports: https://github.com/BoShiangKe/InfluenceAUC/issues
License: GPL-3
NeedsCompilation: no
CRAN checks: influenceAUC results

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