Random Forest Based Approach for Concept-Drift Handling


Autoria(s): Zhukov, Aleksei; Sidorov, Denis; Foley, Aoife; Marshall, A.H.
Data(s)

07/04/2016

Resumo

Algorithms for concept drift handling are important for various applications including video analysis and smart grids. In this paper we present decision tree ensemble classication method based on the Random Forest algorithm for concept drift. The weighted majority voting ensemble aggregation rule is employed based on the ideas of Accuracy Weighted Ensemble (AWE) method. Base learner weight in our case is computed for each sample evaluation using base learners accuracy and intrinsic proximity measure of Random Forest. Our algorithm exploits both temporal weighting of samples and ensemble pruning as a forgetting strategy. We present results of empirical comparison of our method with îriginal random forest with incorporated replace-the-looser forgetting andother state-of-the-art concept-drift classiers like AWE2.

Identificador

http://pure.qub.ac.uk/portal/en/publications/random-forest-based-approach-for-conceptdrift-handling(2dbe8a89-7435-4c67-a605-6418ed0027d7).html

Idioma(s)

eng

Direitos

info:eu-repo/semantics/restrictedAccess

Fonte

Zhukov , A , Sidorov , D , Foley , A & Marshall , A H 2016 , ' Random Forest Based Approach for Concept-Drift Handling ' Paper presented at 5th International Conference on the Analysis of Images, Social Networks and Texts , Yekaterinburg , Russian Federation , 07/04/2016 - 09/04/2016 , .

Palavras-Chave #machine learning, decision tree, concept drift, ensemble learning, classication, random forest
Tipo

conferenceObject