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Online learning from drifting capricious data streams with flexible Hoeffding tree

Title
Online learning from drifting capricious data streams with flexible Hoeffding tree
Type
Article in International Scientific Journal
Year
2025
Authors
Zhao, R
(Author)
Other
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You, Y
(Author)
Other
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Sun, J
(Author)
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Gama, João
(Author)
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Jiang, J
(Author)
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Journal
Vol. 62
ISSN: 0306-4573
Publisher: Elsevier
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Publicação em ISI Web of Knowledge ISI Web of Knowledge - 0 Citations
Publicação em Scopus Scopus - 0 Citations
Other information
Authenticus ID: P-018-Z58
Abstract (EN): Capricious data streams, marked by random emergence and disappearance of features, are common in practical scenarios such as sensor networks. In existing research, they are mainly handled based on linear classifiers, feature correlation or ensemble of trees. There exist deficiencies such as limited learning capacity and high time cost. More importantly, the concept drift problem in them receives little attention. Therefore, drifting capricious data streams are focused on in this paper, and a new algorithm DCFHT (online learning from Drifting Capricious data streams with Flexible Hoeffding Tree) is proposed based on a single Hoeffding tree. DCFHT can achieve non-linear modeling and adaptation to drifts. First, DCFHT dynamically reuses and restructures the tree. The reusable information includes the tree structure and the information stored in each node. The restructuring process ensures that the Hoeffding tree dynamically aligns with the latest universal feature space. Second, DCFHT adapts to drifts in an informed way. When a drift is detected, DCFHT starts training a backup learner until it reaches the ability to replace the primary learner. Various experiments on 22 public and 15 synthetic datasets show that it is not only more accurate, but also maintains relatively low runtime on capricious data streams. © 2025 Elsevier Ltd
Language: English
Type (Professor's evaluation): Scientific
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