Research on the Era Environment of Data Mining

Article Preview

Abstract:

Modern society has entered an era of information technology, computer communication and network technology is changing the entire human and social, blowing a lot of information to bring convenience, it also brings a lot of new questions, the first is information overload , it is difficult to digest: the second is difficult to identify true and false information; third is difficult to ensure information security; fourth is the information in the form of inconsistent, difficult to handle, "Faced with these challenges, data mining techniques have emerged, and have a higher frame model security and privacy protection according distributed heterogeneous environments of data mining features, integrated use of new technologies SOA, ontology, WEB services, follow the user-centric concept, data mining system framework proposed an open service oriented. binding domain knowledge of data mining applications, follow the user-centered design philosophy presented to the user for data mining center of the body, on the one hand based on data mining and mining objects to organize data mining algorithms, on the other hand provide effective data mining application solutions for the user based on the application domain knowledge to help different areas of multi-level users to easily select data mining services.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

1882-1885

Citation:

Online since:

January 2015

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2015 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Merugu S., Ghosh J. Privacy-preserving Distributed Clustering using Generative Models. Data Mining, (2011).

DOI: 10.1109/icdm.2003.1250922

Google Scholar

[2] Wache H, Vögele T, Visser U, et al. Ontology-based Integration of Information – A Survey of Existing Approaches. In Proceedings of IJCAI-01 Workshop: Ontologiesand Information Sharing. Seattle, WA, (2011).

Google Scholar

[3] Stephen R. Gardner. Building the data warehouse. Soft Watch, (2010).

Google Scholar

[4] Stephen R. Gardner. Building the data warehouse. Communications of theACM, (2010).

Google Scholar

[5] Furlow G. The case for building a data warehouse. IT Professional, (2011).

Google Scholar

[6] McHugh J., Abiteboul S., Goldman R., et al. Lore: A Database Management System for Semistructured Data. ACM SIGMOD Record, (2010).

DOI: 10.1145/262762.262770

Google Scholar

[7] Laura M. Haas, Renée J. Miller, B. Niswonger, et al. Transforming HeterogeneousData with Database Middleware: Beyond Integration. IEEE Data Engineering Bulletin, (2011).

Google Scholar

[8] Vanja Josifovski, Peter Schwarz, Laura Haas, et al. Garlic: A New Flavor ofFederated Query Processing for DB2. In Proceedings of the 2002 ACM SIGMODinternational conference on Management of data (SIGMOD 2002), Madison, Wisconsin, (2010).

DOI: 10.1145/564691.564751

Google Scholar