Robust Classification for Imprecise Environments (1989)
| Citations: | 209 - 12 self |
BibTeX
@MISC{Provost89robustclassification,
author = {Foster Provost and Tom Fawcett},
title = {Robust Classification for Imprecise Environments},
year = {1989}
}
Years of Citing Articles
OpenURL
Abstract
In real-world environments it is usually difficult to specify target operating conditions precisely. This uncertainty makes building robust classification systems problematic. We present a method for the comparison of classifier performance that is robust to imprecise class distributions and misclassification costs. The ROC convex hull method combines techniques from ROC analysis, decision analysis and computational geometry, and adapts them to the particulars of analyzing learned classifiers. The method is efficient and incremental, minimizes the management of classifier performance data, and allows for clear visual comparisons and sensitivity analyses. We then show that it is possible to build a hybrid classifier that will perform at least as well as the best available classifier for any target conditions. This robust performance extends across a wide variety of comparison frameworks, including the optimization of metrics such as accuracy, expected cost, lift, precision, recall, and ...







