A Coherent Interpretation of AUC as a Measure of Aggregated Classification Performance
Abstract
The area under the ROC curve (AUC), a well-known measure of ranking performance, is also often used as a measure of classification performance, aggregating over decision thresholds as well as class and cost skews. However, David Hand has recently argued that AUC is fundamentally incoherent as a measure of aggregated classifier performance and proposed an alternative measure. Specifically, Hand derives a linear relationship between AUC and expected minimum loss, where the expectation is taken over a distribution of the misclassification cost parameter that depends on the model under consideration. Replacing this distribution with a Beta(2;2) distribution, Hand derives his alternative measure H. In this paper we offer an alternative, coherent interpretation of AUC as linearly related to expected loss. We use a distribution over cost parameter and a distribution over data points, both uniform and hence model independent. Should one wish to consider only optimal thresholds, we demonstrate that a simple and more intuitive alternative to Hand�s H measure is already available in the form of the area under the cost curve.
Cite
Text
Flach et al. "A Coherent Interpretation of AUC as a Measure of Aggregated Classification Performance." International Conference on Machine Learning, 2011.Markdown
[Flach et al. "A Coherent Interpretation of AUC as a Measure of Aggregated Classification Performance." International Conference on Machine Learning, 2011.](https://mlanthology.org/icml/2011/flach2011icml-coherent/)BibTeX
@inproceedings{flach2011icml-coherent,
title = {{A Coherent Interpretation of AUC as a Measure of Aggregated Classification Performance}},
author = {Flach, Peter A. and Hernández-Orallo, José and Ramirez, Cèsar Ferri},
booktitle = {International Conference on Machine Learning},
year = {2011},
pages = {657-664},
url = {https://mlanthology.org/icml/2011/flach2011icml-coherent/}
}