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dc.contributor.authorAllem, Luiz Emíliopt_BR
dc.contributor.authorHoppen, Carlospt_BR
dc.contributor.authorSibemberg, Lucas Sivieropt_BR
dc.date.accessioned2026-02-19T07:59:00Zpt_BR
dc.date.issued2025pt_BR
dc.identifier.issn0101-8205pt_BR
dc.identifier.urihttp://hdl.handle.net/10183/301595pt_BR
dc.description.abstractWe introduce a new similarity measure for spectral clustering which produces an algorithm with input given by a data set and by the desired number of clusters. This is different from traditional similarity measures for spectral clustering in the literature, which rely on additional scaling parameters that have to be adjusted according to the dataset. Consequently, these other algorithms require considerable user expertise regarding both the chosen method and the data being analyzed. In contrast, our method does not require adjusting any scaling parameters, making our algorithm more accessible to users from various fields. Our experiments showed that this algorithm performs very well on synthetic data sets having complex shapes and multiple scales. For real data sets, the results were very competitive in comparison with traditional spectral algorithms.en
dc.format.mimetypeapplication/pdfpt_BR
dc.language.isoengpt_BR
dc.relation.ispartofComputational and applied mathematics. Vol. 44, n. 7 (2025), Art. 331pt_BR
dc.rightsOpen Accessen
dc.subjectSpectral clusteringen
dc.subjectAgrupamento espectralpt_BR
dc.subjectTeoria dos grafospt_BR
dc.subjectSpectral graph theoryen
dc.subjectSimilarity measureen
dc.subjectMedidas de similaridadept_BR
dc.subjectReconhecimento de padrõespt_BR
dc.subjectPattern recognitionen
dc.titleA self-adjusting spectral clustering algorithmpt_BR
dc.typeArtigo de periódicopt_BR
dc.identifier.nrb001289669pt_BR
dc.type.originEstrangeiropt_BR


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