Version 2 2020-04-07, 15:12Version 2 2020-04-07, 15:12
Version 1 2020-04-07, 15:10Version 1 2020-04-07, 15:10
conference contribution
posted on 2020-04-07, 15:12authored byH Du, LL Minku, H Zhou
In data stream mining, predictive models typically suffer drops in predictive performance due to concept drift. As enough data representing the new concept must be collected for the new concept to be well learnt, the predictive performance of existing models usually takes some time to recover from concept drift. To speed up recovery from concept drift and improve predictive performance in data stream mining, this work proposes a novel approach called Multi-sourcE onLine TrAnsfer learning for Non-statIonary Environments (Melanie). Melanie is the first approach able to transfer knowledge between multiple data streaming sources in non-stationary environments. It creates several sub-classifiers to learn different aspects from different source and target concepts over time. The sub-classifiers that match the current target concept well are identified, and used to compose an ensemble for predicting examples from the target concept. We evaluate Melanie on several synthetic data streams containing different types of concept drift and on real world data streams. The results indicate that Melanie can deal with a variety drifts and improve predictive performance over existing data stream learning algorithms by making use of multiple sources.
Funding
This work was supported by EPSRC Grant No. EP/R006660/1
History
Citation
H. Du, L. L. Minku and H. Zhou, "Multi-Source Transfer Learning for Non-Stationary Environments," 2019 International Joint Conference on Neural Networks (IJCNN), Budapest, Hungary, 2019, pp. 1-8.
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Informatics
Version
AM (Accepted Manuscript)
Published in
2019 International Joint Conference on Neural Networks (IJCNN)
Publisher
Institute of Electrical and Electronics Engineers (IEEE)