학술논문

A data mining methodology and its application to semi-automatic knowledge acquisition
Document Type
Conference
Source
Database and Expert Systems Applications. 8th International Conference, DEXA '97. Proceedings Database expert systems applications Database and Expert Systems Applications, 1997. Proceedings., Eighth International Workshop on. :670-677 1997
Subject
Computing and Processing
Data mining
Knowledge acquisition
Computer science
Databases
Application software
Expert systems
Concrete
Telecommunication network management
Information analysis
Data analysis
Language
Abstract
We introduce a methodology for knowledge discovery in databases (KDD) where one first discovers large collections of patterns at once, and then performs interactively retrieves subsets of the collection of patterns. The proposed methodology suits such KDD formalisms as association and episode rules, where large collections of potentially interesting rules can be found efficiently. We present methods that support interactive exploration of large collections of rules. With these methods the user can flexibly specify the focus of interest, and also iteratively refine it. We have implemented our methodology in the TASA system which discovers patterns in telecommunication alarm databases. We give concrete examples of how to use frequent patterns in the construction of alarm correlation expert systems.