Título: Knowledge discovery based on computational taxonomy and intelligent data mining
Autores: Perichinsky, Gregorio
García Martínez, Ramón
Proto, Araceli
Fecha: 2012-11-06
2000-10
2000-10
Publicador: Unversidad Nacional de La Plata
Fuente:

Tipo: Objeto de conferencia
Objeto de conferencia
Tema: knowledge discovery
insufficient database
taxonomy
Data mining
Clustering
Ciencias Informáticas
Descripción: This study investigates an approach of knowledge discovery and data mining in insufficient databases. An application of Computational Taxonomy analysis demonstrates that the approach is effective in such a data mining process. The approach is characterized by the use of both the second type of domain knowledge and visualization. This type of knowledge is newly defined in this study and deduced from supposition about background situations of the domain. The supposition is triggered by strong intuition about the extracted features in a recurrent process of data mining. This type of domain knowledge is useful not only for discovering interesting knowledge but also for guiding the subsequent search for more explicit and interesting knowledge. The visualization is very useful for triggering the supposition.
Área: Ingeniería de Software - Bases de Datos
Idioma: Inglés