Fondazione GRINS
Growing Resilient,
Inclusive and Sustainable
Galleria Ugo Bassi 1, 40121, Bologna, IT
C.F/P.IVA 91451720378
Finanziato dal Piano Nazionale di Ripresa e Resilienza (PNRR), Missione 4 (Infrastruttura e ricerca), Componente 2 (Dalla Ricerca all’Impresa), Investimento 1.3 (Partnership Estese), Tematica 9 (Sostenibilità economica e finanziaria di sistemi e territori).



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Spectral clustering is a powerful technique for data partitioning, but determining the optimal number of clusters remains challenging. This article introduces ALLE (ALgebraic Laplacian Estimator), an automatic method for estimating the number of clusters within the spectral clustering framework. By formulating the cluster recovery problem as a penalized minimization task, ALLE is able to systematically recover the number of clusters and the embedding space by assuming for the Laplacian matrix a low-rank plus sparse decomposition. Specifically, ALLE recovers the low-rank representation of the Laplacian matrix using nuclear norm plus -norm penalization. ALLE is computed via a proximal gradient algorithm alternating Singular Value Thresholding and Soft Thresholding, and it's very good performance is shown via a simulation study.
AKNOWLEDGEMENTS
This study was funded by the European Union - NextGenerationEU, in the framework of the GRINS - Growing Resilient, INclusive and Sustainable project (GRINS PE00000018). The views and opinions expressed are solely those of the authors and do not necessarily reflect those of the European Union, nor can the European Union be held responsible for them.
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