作者
Nada Lavrač, Peter Flach, Blaz Zupan
发表日期
1999/6/24
图书
International Conference on Inductive Logic Programming
页码范围
174-185
出版商
Springer Berlin Heidelberg
简介
Numerous measures are used for performance evaluation in machine learning. In predictive knowledge discovery, the most frequently used measure is classification accuracy. With new tasks being addressed in knowledge discovery, new measures appear. In descriptive knowledge discovery, where induced rules are not primarily intended for classification, new measures used are novelty in clausal and subgroup discovery, and support and confidence in association rule learning. Additional measures are needed as many descriptive knowledge discovery tasks involve the induction of a large set of redundant rules and the problem is the ranking and filtering of the induced rule set. In this paper we develop a unifying view on some of the existing measures for predictive and descriptive induction. We provide a common terminology and notation by means of contingency tables. We demonstrate how to trade off …
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N Lavrač, P Flach, B Zupan - International Conference on Inductive Logic …, 1999