Active Fuzzy Weighting Ensemble for Dealing with Concept Drift

The concept drift problem is a pervasive phenomenon in real-world data stream applications. It makes well-trained static learning models lose accuracy and become outdated as time goes by. The existence of different types of concept drift makes it more difficult for learning algorithms to track. This...

Full description

Bibliographic Details
Main Authors: Fan Dong, Jie Lu, Guangquan Zhang, Kan Li
Format: Article
Language:English
Published: Atlantis Press 2018-01-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/25888775/view
id doaj-e3cfe965467c47059c859429c343448e
record_format Article
spelling doaj-e3cfe965467c47059c859429c343448e2020-11-25T01:42:38ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832018-01-0111110.2991/ijcis.11.1.33Active Fuzzy Weighting Ensemble for Dealing with Concept DriftFan DongJie LuGuangquan ZhangKan LiThe concept drift problem is a pervasive phenomenon in real-world data stream applications. It makes well-trained static learning models lose accuracy and become outdated as time goes by. The existence of different types of concept drift makes it more difficult for learning algorithms to track. This paper proposes a novel adaptive ensemble algorithm, the Active Fuzzy Weighting Ensemble, to handle data streams involving concept drift. During the processing of data instances in the data streams, our algorithm first identifies whether or not a drift occurs. Once a drift is confirmed, it uses data instances accumulated by the drift detection method to create a new base classifier. Then, it applies fuzzy instance weighting and a dynamic voting strategy to organize all the existing base classifiers to construct an ensemble learning model. Experimental evaluations on seven datasets show that our proposed algorithm can shorten the recovery time of accuracy drop when concept drift occurs, adapt to different types of concept drift, and obtain better performance with less computation costs than the other adaptive ensembles.https://www.atlantis-press.com/article/25888775/viewconcept driftchange detectionensemble learningdata streams
collection DOAJ
language English
format Article
sources DOAJ
author Fan Dong
Jie Lu
Guangquan Zhang
Kan Li
spellingShingle Fan Dong
Jie Lu
Guangquan Zhang
Kan Li
Active Fuzzy Weighting Ensemble for Dealing with Concept Drift
International Journal of Computational Intelligence Systems
concept drift
change detection
ensemble learning
data streams
author_facet Fan Dong
Jie Lu
Guangquan Zhang
Kan Li
author_sort Fan Dong
title Active Fuzzy Weighting Ensemble for Dealing with Concept Drift
title_short Active Fuzzy Weighting Ensemble for Dealing with Concept Drift
title_full Active Fuzzy Weighting Ensemble for Dealing with Concept Drift
title_fullStr Active Fuzzy Weighting Ensemble for Dealing with Concept Drift
title_full_unstemmed Active Fuzzy Weighting Ensemble for Dealing with Concept Drift
title_sort active fuzzy weighting ensemble for dealing with concept drift
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2018-01-01
description The concept drift problem is a pervasive phenomenon in real-world data stream applications. It makes well-trained static learning models lose accuracy and become outdated as time goes by. The existence of different types of concept drift makes it more difficult for learning algorithms to track. This paper proposes a novel adaptive ensemble algorithm, the Active Fuzzy Weighting Ensemble, to handle data streams involving concept drift. During the processing of data instances in the data streams, our algorithm first identifies whether or not a drift occurs. Once a drift is confirmed, it uses data instances accumulated by the drift detection method to create a new base classifier. Then, it applies fuzzy instance weighting and a dynamic voting strategy to organize all the existing base classifiers to construct an ensemble learning model. Experimental evaluations on seven datasets show that our proposed algorithm can shorten the recovery time of accuracy drop when concept drift occurs, adapt to different types of concept drift, and obtain better performance with less computation costs than the other adaptive ensembles.
topic concept drift
change detection
ensemble learning
data streams
url https://www.atlantis-press.com/article/25888775/view
work_keys_str_mv AT fandong activefuzzyweightingensemblefordealingwithconceptdrift
AT jielu activefuzzyweightingensemblefordealingwithconceptdrift
AT guangquanzhang activefuzzyweightingensemblefordealingwithconceptdrift
AT kanli activefuzzyweightingensemblefordealingwithconceptdrift
_version_ 1725035006337744896