We propose a procedure devoted to the induction of a shadowed set through the post-processing of a fuzzy set, which in turn is learned from labeled data. More precisely, the fuzzy set is inferred using a modified support vector clustering algorithm, enriched in order to optimize the fuzziness grade. Finally, the fuzzy set is transformed into a shadowed set through application of an optimal alpha-cut. The procedure is tested on synthetic and real-world datasets.

Data-Driven Induction of Shadowed Sets Based on Grade of Fuzziness / D. Malchiodi, A.M. Zanaboni (LECTURE NOTES IN ARTIFICIAL INTELLIGENCE). - In: Fuzzy Logic and Applications / [a cura di] R. Fullér, S. Giove, F. Masulli. - Prima edizione. - Cham : Springer, 2019. - ISBN 9783030125431. - pp. 17-28 (( Intervento presentato al 12. convegno WILF tenutosi a Genova nel 2018 [10.1007/978-3-030-12544-8_2].

Data-Driven Induction of Shadowed Sets Based on Grade of Fuzziness

D. Malchiodi
Primo
;
A.M. Zanaboni
Secondo
2019

Abstract

We propose a procedure devoted to the induction of a shadowed set through the post-processing of a fuzzy set, which in turn is learned from labeled data. More precisely, the fuzzy set is inferred using a modified support vector clustering algorithm, enriched in order to optimize the fuzziness grade. Finally, the fuzzy set is transformed into a shadowed set through application of an optimal alpha-cut. The procedure is tested on synthetic and real-world datasets.
Shadowed sets; Fuzzy set induction; Machine learning; Support vector clustering
Settore INF/01 - Informatica
2019
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/629506
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