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Pruning / Artificial intelligence / Learning / C4.5 algorithm / Decision trees / Computational statistics / Decision tree learning
Date: 2004-09-13 01:14:21
Pruning
Artificial intelligence
Learning
C4.5 algorithm
Decision trees
Computational statistics
Decision tree learning

Failure Diagnosis Using Decision Trees Mike Chen, Alice X. Zheng, Jim Lloyd, Michael I. Jordan, Eric Brewer University of California at Berkeley and eBay Inc. {mikechen, alicez, jordan, brewer}@cs.berkeley.edu, jlloyd@eb

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