Home Page

Papers

Submissions

News

Editorial Board

Announcements

Proceedings

Open Source Software

Search

Statistics

Login



RSS Feed

Accuracy-Rejection Curves (ARCs) for Comparing Classification Methods with a Reject Option

Malik Sajjad Ahmed Nadeem, Jean-Daniel Zucker, Blaise Hanczar; JMLR W&CP 8:65-81, 2010.

Abstract

Data extracted from microarrays are now considered an important source of knowledge about various diseases. Several studies based on microarray data and the use of receiver operating characteristics (ROC) graphs have compared supervised machine learning approaches. These comparisons are based on classification schemes in which all samples are classified, regardless of the degree of confidence associated with the classification of a particular sample on the basis of a given classifier. In the domain of healthcare, it is safer to refrain from classifying a sample if the confidence assigned to the classification is not high enough, rather than classifying all samples even if confidence is low. We describe an approach in which the performance of different classifiers is compared, with the possibility of rejection, based on several reject areas. Using a tradeoff between accuracy and rejection, we propose the use of accuracy-rejection curves (ARCs) and three types of relationship between ARCs for comparisons of the ARCs of two classifiers. Empirical results based on purely synthetic data, semi-synthetic data (generated from real data obtained from patients) and public microarray data for binary classification problems demonstrate the efficacy of this method.



Home Page

Papers

Submissions

News

Editorial Board

Announcements

Proceedings

Open Source Software

Search

Statistics

Login



RSS Feed

Page last modified on Tue Feb 9 22:52:36 CET 2010.

webmasterjmlr.org Copyright © JMLR 2000. All rights reserved.