Oracle Data Mining and the implementation of Support Vector Machine
Details
Contemporary commercial databases are putting an increased accentuation on analytic abilities. The data mining technology is very important when we are referring to large volumes of data for analysis. Regarding novel data if we use modern data mining techniques we may improve their accuracy and generalization. But as we all know attaining results of good quality frequently demands high level of proficiency and user expertise. Support Vector Machines is a wonderful and potent state-of-the-art data mining algorithm and can express problems not compliant to traditional statistical analysis. Anywise, this kind of algorithm stays limited on the strength of methodological complexities, scalability challenges, and scarcity of production quality SVM implementations. The paper hereby portrays Oracle's implementation of SVM where the primary topic lies on ease of use and scalability whilst maintaining high performance accuracy. Support Vector Machines algorithm is entirely integrated into the Oracle database framework and so it can be easily leveraged in a multifariousness of deployment scenarios.
Autorentext
Victoria Cupet is a consultant, trainer and coach with an experience of more than 10 years in such fields as Business Analysis, Process Management, Project Managements and Agile.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783659716973
- Herausgeber LAP Lambert Academic Publishing
- Anzahl Seiten 88
- Genre Software
- Sprache Englisch
- Gewicht 149g
- Autor Victoria Cupet
- Größe H220mm x B150mm x T6mm
- Jahr 2015
- EAN 9783659716973
- Format Kartonierter Einband
- ISBN 3659716979
- Veröffentlichung 15.06.2015
- Titel Oracle Data Mining and the implementation of Support Vector Machine