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                                       Details for article 2 of 4 found articles
 
 
  LEARNING INDUCTIVE RULES USING HELLINGER MEASURE
 
 
Title: LEARNING INDUCTIVE RULES USING HELLINGER MEASURE
Author: Lee, Chang-Hwan
Appeared in: Applied artificial intelligence
Paging: Volume 13 (1999) nr. 8 pages 743-762
Year: 1999-11-01
Contents: Systems for inducing classification rules from databases are valuable tools for assisting in the task of knowledge acquisition for expert systems. This paper presents an information theoretic approach for extracting knowledge from databases in the form of inductive rules using Hellinger measure, an entropy function which is utilized as a criteria for selecting rules generated from databases. In order to reduce the complexity of rule generation, the characteristics of Hellinger measure are analyzed and used to prune the search space of hypothesis. The system is implemented and tested on some well-known machine-learning databases.
Publisher: Taylor & Francis
Source file: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details for article 2 of 4 found articles
 
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