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Output details

15 - General Engineering

University of Kent

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Output 31 of 84 in the submission
Article title

Diversity in multiple classifier ensembles based on binary feature quantisation with application to face recognition

Type
D - Journal article
Title of journal
Applied Soft Computing
Article number
-
Volume number
8
Issue number
1
First page of article
437
ISSN of journal
1568-4946
Year of publication
2008
Number of additional authors
2
Additional information

While the benefits from combining multiple classifiers in ensembles have been established by a large number of empirical studies, there are only a handful of papers examining the requirements for forming ensembles which outperform constituent classifiers. This paper, a major output from an EPSRC project (GR/S24831/01), offers a novel analysis of “diversity” which is recognized as one of the most important issues for the development of accurate multi-classifier systems. Our results strongly suggest that increased diversity among the constituent classifiers is not sufficient to guarantee performance improvements; rather a trade-off between participant classifiers’ accuracy and diversity is necessary to achieve maximum gains.

Interdisciplinary
-
Cross-referral requested
-
Research group
3 - Image and information engineering
Proposed double-weighted
No
Double-weighted statement
-
Reserve for a double-weighted output
No
Non-English
No
English abstract
-