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      Spectral Embedding Norm: Looking Deep into the Spectrum of the Graph Laplacian.

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          Abstract

          The extraction of clusters from a dataset which includes multiple clusters and a significant background component is a non-trivial task of practical importance. In image analysis this manifests for example in anomaly detection and target detection. The traditional spectral clustering algorithm, which relies on the leading K eigenvectors to detect K clusters, fails in such cases. In this paper we propose the spectral embedding norm which sums the squared values of the first I normalized eigenvectors, where I can be significantly larger than K. We prove that this quantity can be used to separate clusters from the background in unbalanced settings, including extreme cases such as outlier detection. The performance of the algorithm is not sensitive to the choice of I, and we demonstrate its application on synthetic and real-world remote sensing and neuroimaging datasets.

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          Author and article information

          Journal
          SIAM J Imaging Sci
          SIAM journal on imaging sciences
          Society for Industrial & Applied Mathematics (SIAM)
          1936-4954
          1936-4954
          2020
          : 13
          : 2
          Affiliations
          [1 ] Department of Mathematics, Duke University, Durham, NC.
          [2 ] Halicioğlu Data Science Institute, University of California, San Diego.
          Article
          NIHMS1594853
          10.1137/18m1283160
          8204716
          34136062
          f50f20b6-e759-41f3-808a-93722e2ae29a
          History

          Calcium imaging,Graph Laplacian,Outlier detection,Spectral Clustering,Spectral Theory

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