Data processing: database and file management or data structures – Database design – Data structure types
Reexamination Certificate
2005-01-24
2009-02-10
Boccio, Vincent F (Department: 2169)
Data processing: database and file management or data structures
Database design
Data structure types
C707S793000, C707S793000, C707S793000, C707S793000
Reexamination Certificate
active
07490075
ABSTRACT:
The subject invention leverages scaleable itemsets and/or association rules to provide dynamic adjustment of memory usage. This allows the subject invention to provide association rules and/or itemsets with the highest support while utilizing a bounded amount of memory. Thus, a data analysis system and/or method utilizing the subject invention can self-adjust to provide the best association rules and/or itemsets based on available system resources. One instance of the subject invention employs dynamically adjustable minimum support values for data itemsets and/or association rules to facilitate in compensating for memory availability. In yet another instance of the subject invention a prefix tree data structure is utilized to facilitate in constructing itemsets. Memory utilization is then adjusted via pruning and/or reallocation of counter vectors and/or pointer vectors and/or reallocation of nodes of the prefix tree data structure for scaleable data itemsets and/or association rules.
REFERENCES:
patent: 5615341 (1997-03-01), Agrawal et al.
patent: 5724573 (1998-03-01), Agrawal et al.
patent: 5842200 (1998-11-01), Agrawal et al.
patent: 5920855 (1999-07-01), Aggarwal et al.
patent: 6138117 (2000-10-01), Bayardo
patent: 6278998 (2001-08-01), Ozden et al.
patent: 6356890 (2002-03-01), Agrawal et al.
patent: 6826569 (2004-11-01), Robertson
patent: 2002/0143521 (2002-10-01), Call
Christian Borgelt, Efficient implementations of apriori and eclat. In Bart Goethals and Mohammed J. Zaki, editors, Proceedings of the IEEE ICDM Workshop on Frequent Itemset Mining Implementations, Nov. 2003, Melbourne, FL, USA.
R. Agrawal, et al., Mining Associations between Sets of Items in Massive Databases, Proc. of the ACM-SIGMOD 1993 Int'l Conference on Management of Data, May 1993, pp. 207-216, Washington D.C.
Lind Jesper B.
MacLennan C. James
Meek Christopher A.
Amin Turocy & Calvin LLP
Boccio Vincent F
Microsoft Corporation
LandOfFree
Scaleable data itemsets and association rules does not yet have a rating. At this time, there are no reviews or comments for this patent.
If you have personal experience with Scaleable data itemsets and association rules, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Scaleable data itemsets and association rules will most certainly appreciate the feedback.
Profile ID: LFUS-PAI-O-4093998