Advanced data mining research and bioinformatics learning

The ADMIRABLE (Advanced Data MIning Research And Business intelligence/Big data/Bioinformatics LEarning) research group main aim is the development of new ensemble algorithms and the application of data mining, data visualization and pattern matching techniques to diverse various domains such as: fault detection (in machine tools, in wind power mills), bioinformatics, time series classification or multidimensional data analysis industrial environments. Among the main achievements of the researchers of the group is the development of several new data mining algorithms: Rotation Forest, Nonlinear Boosting Projections, Disturbing Neighbours, Democratic Instance Selection, GRASP Forest, Random Balance, Random Feature Weights, Random Oracles that have aroused the interest of the data mining community. For example, Rotation Forest is an algorithm considered as a method of reference in some reference books in the area. The group is recognized by regional government of Castile and Leon as a Consolidated Research Unit.

Researchers

Classifications

  • Application Area: CIENTÍFICO TÉCNICA
  • Group Character: 01
  • ANEP Area: Ciencias de la computación y tecnología informática
  • Group Recognition: GRUPO RECONOCIDO UBU

beta Prevailing specialties (top 10) Obtained from publications help
Obtained from publications

The displayed thematic specialties have been obtained through the application of artificial intelligence models, derived as a result of the Hercules Project from those publications with an abstract, provided that the record does not come from commercial databases, which impose restrictions on data usage.

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Former members (14)