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Computational statistics / Artificial intelligence / C4.5 algorithm / ID3 algorithm / Association rule learning / ReD / Intrusion detection system / Ross Quinlan / Data Analysis Techniques for Fraud Detection / Machine learning / Decision trees / Data mining
Date: 2001-05-31 10:21:44
Computational statistics
Artificial intelligence
C4.5 algorithm
ID3 algorithm
Association rule learning
ReD
Intrusion detection system
Ross Quinlan
Data Analysis Techniques for Fraud Detection
Machine learning
Decision trees
Data mining

Global Co-Operation in the New Millennium The 9th European Conference on Information Systems Bled, Slovenia, June 27-29, 2001 DATA MINING PROTOTYPE FOR DETECTING E-COMMERCE FRAUD [RESEARCH IN PROGRESS]

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