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EUROGP
2007
Springer

Mining Distributed Evolving Data Streams Using Fractal GP Ensembles

14 years 20 days ago
Mining Distributed Evolving Data Streams Using Fractal GP Ensembles
A Genetic Programming based boosting ensemble method for the classification of distributed streaming data is proposed. The approach handles flows of data coming from multiple locations by building a global model obtained by the aggregation of the local models coming from each node. A main characteristics of the algorithm presented is its adaptability in presence of concept drift. Changes in data can cause serious deterioration of the ensemble performance. Our approach is able to discover changes by adopting a strategy based on self-similarity of the ensemble behavior, measured by its fractal dimension, and to revise itself by promptly restoring classification accuracy. Experimental results on a synthetic data set show the validity of the approach in maintaining an accurate and up-to-date GP ensemble.
Gianluigi Folino, Clara Pizzuti, Giandomenico Spez
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where EUROGP
Authors Gianluigi Folino, Clara Pizzuti, Giandomenico Spezzano
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