Literature DB >> 29993956

Concept Drift Adaptation by Exploiting Historical Knowledge.

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Abstract

Incremental learning with concept drift has often been tackled by ensemble methods, where models built in the past can be retrained to attain new models for the current data. Two design questions need to be addressed in developing ensemble methods for incremental learning with concept drift, i.e., which historical (i.e., previously trained) models should be preserved and how to utilize them. A novel ensemble learning method, namely, Diversity and Transfer-based Ensemble Learning (DTEL), is proposed in this paper. Given newly arrived data, DTEL uses each preserved historical model as an initial model and further trains it with the new data via transfer learning. Furthermore, DTEL preserves a diverse set of historical models, rather than a set of historical models that are merely accurate in terms of classification accuracy. Empirical studies on 15 synthetic data streams and 5 real-world data streams (all with concept drifts) demonstrate that DTEL can handle concept drift more effectively than 4 other state-of-the-art methods.

Entities:  

Year:  2018        PMID: 29993956     DOI: 10.1109/TNNLS.2017.2775225

Source DB:  PubMed          Journal:  IEEE Trans Neural Netw Learn Syst        ISSN: 2162-237X            Impact factor:   10.451


  1 in total

1.  The role of diversity and ensemble learning in credit card fraud detection.

Authors:  Gian Marco Paldino; Bertrand Lebichot; Yann-Aël Le Borgne; Wissam Siblini; Frédéric Oblé; Giacomo Boracchi; Gianluca Bontempi
Journal:  Adv Data Anal Classif       Date:  2022-09-28
  1 in total

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