Skip to main content
Kent Academic Repository

Fuzzy Integral Driven Ensemble Classification using A Priori Fuzzy Measures

Agrawal, U., Wagner, C., Garibaldi, J.M., Soria, D. (2019) Fuzzy Integral Driven Ensemble Classification using A Priori Fuzzy Measures. In: IEEE International Conference on Fuzzy Systems. 2019-J. IEEE (doi:10.1109/FUZZ-IEEE.2019.8858821) (KAR id:98866)

Abstract

Aggregation operators are mathematical functions that enable the fusion of information from multiple sources. Fuzzy Integrals (FIs) are widely used aggregation operators, which combine information in respect to a Fuzzy Measure (FM) which captures the worth of both the individual sources and all their possible combinations. However, FIs suffer from the potential drawback of not fusing information according to the intuitively interpretable FM, leading to non-intuitive results. The latter is particularly relevant when a FM has been defined using external information (e.g. experts). In order to address this and provide an alternative to the FI, the Recursive Average (RAV) aggregation operator was recently proposed which enables intuitive data fusion in respect to a given FM. With an alternative fusion operator in place, in this paper, we define the concept of 'A Priori' FMs which are generated based on external information (e.g. classification accuracy) and thus provide an alternative to the traditional approaches of learning or manually specifying FMs. We proceed to develop one specific instance of such an a priori FM to support the decision level fusion step in ensemble classification. We evaluate the resulting approach by contrasting the performance of the ensemble classifiers for different FMs, including the recently introduced Uriz and the Sugeno λ-measure; as well as by employing both the Choquet FI and the RAV as possible fusion operators. Results are presented for 20 datasets from machine learning repositories and contextualised to the wider literature by comparing them to state-of-the-art ensemble classifiers such as Adaboost, Bagging, Random Forest and Majority Voting. © 2019 IEEE.

Item Type: Conference or workshop item (Paper)
DOI/Identification number: 10.1109/FUZZ-IEEE.2019.8858821
Additional information: cited By 1
Divisions: Divisions > Division of Computing, Engineering and Mathematical Sciences > School of Computing
Depositing User: Daniel Soria
Date Deposited: 07 Dec 2022 16:13 UTC
Last Modified: 09 Jan 2024 07:58 UTC
Resource URI: https://kar.kent.ac.uk/id/eprint/98866 (The current URI for this page, for reference purposes)

University of Kent Author Information

  • Depositors only (login required):

Total unique views for this document in KAR since July 2020. For more details click on the image.