SILVERBACK+: scalable association mining via fast list intersection for columnar social data
Journal Article
·
· Knowledge and Information Systems
Not provided.
- Research Organization:
- Northwestern Univ., Evanston, IL (United States)
- Sponsoring Organization:
- USDOE Office of Science (SC)
- DOE Contract Number:
- SC0007456; SC0014330
- OSTI ID:
- 1533312
- Journal Information:
- Knowledge and Information Systems, Vol. 50, Issue 3; ISSN 0219-1377
- Publisher:
- Springer
- Country of Publication:
- United States
- Language:
- English
Mining association rules between sets of items in large databases
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conference | January 1993 |
Efficiently mining long patterns from databases
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conference | January 1998 |
Spatio-temporal data reduction with deterministic error bounds
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journal | April 2006 |
Parallel mining of maximal frequent itemsets from databases
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conference | January 2003 |
Approximate continuous querying over distributed streams
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journal | June 2008 |
Approximate Algorithms for Computing Spatial Distance Histograms with Accuracy Guarantees
|
journal | September 2013 |
Mining frequent patterns without candidate generation
|
conference | January 2000 |
A survey on data compression in wireless sensor networks
|
conference | January 2005 |
Local collaborative ranking
|
conference | January 2014 |
Pfp: parallel fp-growth for query recommendation
|
conference | January 2008 |
Apriori-based frequent itemset mining algorithms on MapReduce
|
conference | January 2012 |
Preserving privacy in association rule mining with bloom filters
|
journal | January 2007 |
Graphical Modeling of Macro Behavioral Targeting in Social Networks
|
conference | December 2013 |
Probabilistic macro behavioral targeting
|
conference | January 2012 |
SILVERBACK: Scalable association mining for temporal data in columnar probabilistic databases
|
conference | March 2014 |
A localized algorithm for parallel association mining
|
conference | January 1997 |
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