First IEEE International Conference on Data Mining (ICDM'01) Using Rule Sets to Maximize ROC Performance San Jose, California November 29-December 02 ISBN: 0-7695-1119-8
Rules are commonly use for classification because they are modular, intelligible and easy to learn. Existing work in classification rule learning assumes the goal is to produce categorical classifications to maximize classification accuracy. Recent work in machine learning has pointed out the limitations of classification accuracy: when class distributions are skewed, or error costs are unequal, an accuracy maximizing rule set can perform poorly. Amore flexible use of a rule set is to produce instance scores indicating the likelihood that an instance belongs to a given class. With such an ability, we can apply rulesets effectively when distributions are skewed or error costs are unequal. This paper empirically investigates different strategies for evaluating rule sets when the goal is to maximize the scoring (ROC) performance.
Citation:
Tom Fawcett, "Using Rule Sets to Maximize ROC Performance," icdm, pp.131, First IEEE International Conference on Data Mining (ICDM'01), 2001 Usage of this product signifies your acceptance of the Terms of Use. | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||