DynED: dynamic ensemble diversification in data stream classification

Date

2023-10-23

Editor(s)

Advisor

Supervisor

Co-Advisor

Co-Supervisor

Instructor

Source Title

International Conference on Information and Knowledge Management, Proceedings

Print ISSN

Electronic ISSN

Publisher

Association for Computing Machinery

Volume

Issue

Pages

3707 - 3711

Language

English

Journal Title

Journal ISSN

Volume Title

Citation Stats
Attention Stats
Usage Stats
60
views
40
downloads

Series

Abstract

Ensemble methods are commonly used in classification due to their remarkable performance. Achieving high accuracy in a data stream environment is a challenging task considering disruptive changes in the data distribution, also known as concept drift. A greater diversity of ensemble components is known to enhance predic tion accuracy in such settings. Despite the diversity of components within an ensemble, not all contribute as expected to its overall performance. This necessitates a method for selecting components that exhibit high performance and diversity. We present a novel ensemble construction and maintenance approach based on MMR (Maximal Marginal Relevance) that dynamically combines the diver sity and prediction accuracy of components during the process of structuring an ensemble. The experimental results on both four real and 11 synthetic datasets demonstrate that the proposed approach (DynED) provides a higher average mean accuracy compared to the five state-of-the-art baselines.

Course

Other identifiers

Book Title

Degree Discipline

Degree Level

Degree Name

Citation

Published Version (Please cite this version)