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Publikační činnost
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stať ve sborníku (D)
Home Department:
Ústav pro výzkum a aplikace fuzzy modelování (94410)
Title:
Dynamic Evaluation of Fuzzy Compositions
Citace
Cao, T. H. N., Burda, M. a Ožana, S. Dynamic Evaluation of Fuzzy Compositions.
In:
FUZZ-IEEE 2023: 2023 IEEE International Conference on Fuzzy Systems (FUZZ) 2023 Incheon, Republic of Korea.
IEEE: IEEE, 2023. s. 1-6. ISBN 979-8-3503-3228-5.
Subtitle
Publication year:
2023
Obor:
Obecná matematika
Number of pages:
6
Page from:
1
Page to:
6
Form of publication:
Tištená verze
ISBN code:
979-8-3503-3228-5
ISSN code:
1544-5615
Proceedings title:
2023 IEEE International Conference on Fuzzy Systems (FUZZ)
Proceedings:
Publisher name:
IEEE
Place of publishing:
IEEE
Country of Publication:
Název konference:
FUZZ-IEEE 2023
Conference venue:
Incheon, Republic of Korea
Datum zahájení konference:
Typ akce podle státní
příslušnosti účastníků:
Celosvětová akce
WoS code:
001103277400009
EID:
2-s2.0-85178502812
Key words in English:
fuzzy relation partial fuzzy logiccomposition feature selectorclassificationdragonfly
Annotation in original language:
Compositions of partial fuzzy relations dealing with undefined values have been extensively studied in partial fuzzy set theory. Their effectiveness in practical classification problems has been addressed. In general, the compositions relate to three sets of objects, truth-valued features and classes. The aim of compositions is to assign a class to an object by using knowledge of the assignment of features to objects and classes to features. In a classical setting, all features of objects (subjects to the classification) are known in advance. Such an assumption may be indeed inconvenient for some practical applications, e.g., because of the costly determination of features. This paper aims at the development of such framework that allows obtaining results from the composition even if some features are unknown and, more importantly, to select the most appropriate feature to be questioned additionally to maximize the accuracy of the result. For this purpose, the concept of dynamic feature selectors is defined. Based on classification results obtained from the composition on mandatory features, a dynamic feature selector recognizes the most promising optional feature whose knowledge may best improve the accuracy of classification. We propose two distinct dynamic feature selectors: (1) based on the sharpness and maximal truth values of the result, the ability to reach maximal values, and (2) based on the distance between the original and updated result of the composition. A practical experiment shows the performance of the proposed solution.
Annotation in english language:
References
Reference
R01:
RIV/61988987:17610/23:A2402KGH
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