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Principles for constructing three-way approximations of fuzzy sets: A comparative evaluation based on unsupervised learning.

Authors :
Zhou, Jie
Pedrycz, Witold
Gao, Can
Lai, Zhihui
Yue, Xiaodong
Source :
Fuzzy Sets & Systems. Jun2021, Vol. 413, p74-98. 25p.
Publication Year :
2021

Abstract

Three-way approximations of fuzzy sets are an important scheme of granular computing, by abstracting a fuzzy set to its discrete three option-alternatives which adhere to human cognitive behaviors and reduce the computational burden. The key point of such three-way approximations of fuzzy sets is how to choose a suitable design leading to their realization. Undesired three-way approximations might be produced if the selected mechanism is unsuitable to data distribution. In this study, the principles for constructing three-way approximations of fuzzy sets are summarized. The following taxonomy of these principles is provided, namely (i) uncertainty balance-based principle, (ii) prototype-based principle, and (iii) model-based invoking the tradeoff between classification error and the number of data that have to be classified. A number of detailed optimization models are discussed in detail. To evaluate the performance of different construction principles, a general unsupervised learning framework based on three-way approximations of fuzzy sets is exhibited. Some synthetic data sets along with sixteen data sets from UCI repository are involved for experiments. Friedman testing followed by Holm-Bonferroni testing are exploited to test the performance significance of the proposed criteria, which can provide insights and deliver guidance when choosing a principle for constructing three-way approximations of fuzzy sets in the real-world scenarios. The research methods in this paper can also be extended to supervised and semi-supervised learning areas. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01650114
Volume :
413
Database :
Academic Search Index
Journal :
Fuzzy Sets & Systems
Publication Type :
Academic Journal
Accession number :
149884876
Full Text :
https://doi.org/10.1016/j.fss.2020.06.019