[JL98] Jürgens, M.; Lenz, H.-J.: The R
a
*
-tree: An Improved R-tree with
Materialized Data for Supporting Range Queries on OLAP-Data.
In: DEXA Workshop, S. 186–191, 1998.
[JMS95] Jagadish, H. V.; Mumick, I. S.; Silberschatz, A.: View Maintenance
Issues for the Chronicle Data Model. In: PODS 1995, San Jose,
CA, S. 113–124, 1995.
[JS96] Johnson, T.; Shasha, D.: Hierarchically Split Cube Forests for Deci-
sion Support: Description and Tuned Design. Technischer Bericht,
New York University - Computer Science Department, 1996.
[JS97] Johnson, T.; Shasha, D.: Some Approaches to Index Design for
Cube Forest. IEEE Database Engineering Bulletin, Band 20, S.
27–35, 1997.
[KAL07] Köppen, V.; Allgeier, M.; Lenz, H.-J.: Balanced Scorecard Simula-
tor – A Tool for Stochastic Business Figures. In: Advances in Data
Analysis, S. 457–464, 2007.
[KBB11] Köppen, V.; Brüggemann, B.; Berendt, B.: Designing Data Integra-
tion: The ETL Pattern Approach. Cepis Upgrade, Band 13, Nr. 3,
S. 49–55, Juli 2011.
[KBK
+
11] Kruse, R.; Borgelt, C.; Klawonn, F.; Moewes, C.; Ruß, G.; Stein-
brecher, M.: Computational Intelligence: Eine methodische Ein-
führung in Künstliche Neuronale Netze, Evolutionäre Algorithmen,
Fuzzy-Systeme und Bayes-Netze. Vieweg + Teubner Verlag, 2011.
[KBM10] Kemper, H.-G.; Baars, H.; Mehanna, W.: Business Intelligence
Grundlagen und praktische Anwendungen. Vieweg + Teubner Ver-
lag, 3. Auflage, 2010.
[KC04] Kimball, R.; Caserta, J.: The Data Warehouse ETL Toolkit: Practi-
cal Techniques for Extracting, Cleaning, Conforming, and Deliver-
ing Data. John Wiley & Sons, 2004.
[KCGS93] Kim, W.; Choi, I.; Gala, S.; Scheevel, M.: On Resolving Schematic
Heterogeneity in Multidatabase Systems. Distributed and Parallel
Databases, Band 1, Nr. 3, S. 251–279, 1993.
[KE04] Kemper, A.; Eickler, A.: Datenbanksysteme – Eine Einführung. Ol-
denbourg Wissenschaftsverlag, München, 5. Auflage, 2004.
[KE09] Kemper, A.; Eickler, A.: Datenbanksysteme – Eine Einführung. Ol-
denbourg Wissenschaftsverlag, München, 7. Auflage, 2009.
Literaturverzeichnis 327

Get Data Warehouse Technologien now with the O’Reilly learning platform.

O’Reilly members experience books, live events, courses curated by job role, and more from O’Reilly and nearly 200 top publishers.