Article in Proceedings INPROC-2005-17

BibliographyMonteiro, Rodrigo Salvador; Zimbrao, Geraldo; Schwarz, Holger; Mitschang, Bernhard; De Souza, Jano Moreira: Building the Data Warehouse of Frequent Itemsets in the DWFIST Approach.
In: Proceedings of the 15th International Symposium on Methodologies for Intelligent Systems Saratoga Springs, New York - May 25-28, 2005.
University of Stuttgart, Faculty of Computer Science, Electrical Engineering, and Information Technology.
pp. 1-9, english.
Springer, May 2005.
ISBN: 3-540-25878-7.
Article in Proceedings (Conference Paper).
CorporationLecture Notes in Computer Science; 3488
CR-SchemaH.2.7 (Database Administration)
H.2.8 (Database Applications)
Abstract

Some data mining tasks can produce such great amounts of data that we have to cope with a new knowledge management problem. Frequent itemset mining fits in this category. Different approaches were proposed to handle or avoid somehow this problem. All of them have problems and limitations. In particular, most of them need the original data during the analysis phase, which is not feasible for data streams. The DWFIST (Data Warehouse of Frequent ItemSets Tactics) approach aims at providing a powerful environment for the analysis of itemsets and derived patterns, such as association rules, without accessing the original data during the analysis phase. This approach is based on a Data Warehouse of Frequent Itemsets. It provides frequent itemsets in a flexible and efficient way as well as a standardized logical view upon which analytical tools can be developed. This paper presents how such a data warehouse can be built.

Department(s)University of Stuttgart, Institute of Parallel and Distributed Systems, Applications of Parallel and Distributed Systems
Project(s)SFB 467 - A5
ORBIT
Entry dateFebruary 24, 2005
   Publ. Department   Publ. Institute   Publ. Computer Science