Artículos de revistas
Unsupervised density-based behavior change detection in data streams
Fecha
2014Registro en:
Intelligent Data Analysis, Amsterdam, v.18, n.2, p.181-201, 2014
1088-467X
10.3233/IDA-140636
Autor
Vallim, Rosane Maria Maffei
Andrade Filho, José Augusto
Mello, Rodrigo Fernandes de
Carvalho, André Carlos Ponce de Leon Ferreira de
Gama, João
Institución
Resumen
The ability to detect changes in the data distribution is an important issue in Data Stream mining. Detecting changes in data distribution allows the adaptation of a previously learned model to accommodate the most recent data and, therefore, improve its prediction capability. This paper proposes a framework for non-supervised automatic change detection in Data Streams called M-DBScan. This framework is composed of a density-based clustering step followed by a novelty detection procedure based on entropy level measures. This work uses two different types of entropy measures, where one considers the spatial distribution of data while the other models temporal relations between observations in the stream. The performance of the method is assessed in a set of experiments comparing M-DBScan with a proximity-based approach. Experimental results provide important insight on how to design change detection mechanisms for streams.