Litcius/Paper detail

Fast optimization of spectral embedding and improved spectral rotation

Zhen Wang, Xiangfeng Dai, Peican Zhu, Rong Wang, Xuelong Li, Feiping Nie

2021IEEE Transactions on Knowledge and Data Engineering32 citationsDOI

Abstract

Spectral clustering is a vital clustering method and has been widely applied for data analysis and pattern reorganization. A routine of solving spectral clustering problem consists of two successive stages: (1) solving a relaxed continuous optimization problem to obtain a real-valued indicator solution (2) transform the real-valued indicator into a 0-1 discrete one as the final clustering result. However, we may lose the optimal solution with such a two-stage process. Besides, the spectral clustering has a high time complexity which limits the analysis of large-scale data. To alleviate these problems, this paper proposes an efficient spectral clustering framework that computes spectral embedding and improved spectral rotation simultaneously (SE-ISR). In addition, we also provide a parameter-free method (SE-ISR-PF) to automatically choose the trade-off parameter. Furthermore, with an anchor-based similarity matrix construction, it is scalable to large-scale data. An effective algorithm with a strict convergence proof is provided to solve the corresponding optimization problem. Experimental results on several benchmark datasets demonstrate that the proposed algorithm outperforms the state-of-art methods.

Topics & Concepts

Spectral clusteringCluster analysisComputer scienceEmbeddingBenchmark (surveying)ScalabilityAlgorithmMatrix decompositionArtificial intelligenceEigenvalues and eigenvectorsGeographyDatabaseQuantum mechanicsGeodesyPhysicsRemote-Sensing Image ClassificationFace and Expression RecognitionAdvanced Computing and Algorithms
Fast optimization of spectral embedding and improved spectral rotation | Litcius