(Enter summary)
Abstract: In this paper we propose a method to construct rule sets that have
a convex hull in ROC space. We introduce a rule selection algorithm called
ROCCER, which operates by selecting rules from a larger set of rules in order
to optimise Area Under the ROC Curve (AUC). Compared with set covering
algorithms, our method is less dependent on the previously induced rules. Experimental
results on three UCI datasets show significant improvements on two of
these. (Update)
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BibTeX entry: (Update)
Prati, R., & Flach, P. (2004). Roccer: A roc convex hull rule learning algorithm. Proceedings of the ECML/PKDD Workshop on Advances in Inductive Rule Learning (pp. 144--153). http://citeseer.ist.psu.edu/prati04roccer.html More
@misc{ prati04roccer,
author = "R. Prati and P. Flach",
title = "Roccer: A roc convex hull rule learning algorithm",
text = "Prati, R., & Flach, P. (2004). Roccer: A roc convex hull rule learning
algorithm. Proceedings of the ECML/PKDD Workshop on Advances in Inductive
Rule Learning (pp. 144--153).",
year = "2004",
url = "citeseer.ist.psu.edu/prati04roccer.html" }
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