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CIKM
1994
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CIKM 1994
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Finding Interesting Rules from Large Sets of Discovered Association Rules
13 years 10 months ago
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www.lans.ece.utexas.edu
Mika Klemettinen, Heikki Mannila, Pirjo Ronkainen,
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CIKM 1994
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Information Management
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Added
09 Aug 2010
Updated
09 Aug 2010
Type
Conference
Year
1994
Where
CIKM
Authors
Mika Klemettinen, Heikki Mannila, Pirjo Ronkainen, Hannu Toivonen, A. Inkeri Verkamo
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Information Technology Study Group
Computer Vision