Litcius/Paper detail

Spectral Clustering With Adaptive Neighbors for Deep Learning

Yang Zhao, Xuelong Li

2021IEEE Transactions on Neural Networks and Learning Systems15 citationsDOI

Abstract

Spectral clustering is a well-known clustering algorithm for unsupervised learning, and its improved algorithms have been successfully adapted for many real-world applications. However, traditional spectral clustering algorithms are still facing many challenges to the task of unsupervised learning for large-scale datasets because of the complexity and cost of affinity matrix construction and the eigen-decomposition of the Laplacian matrix. From this perspective, we are looking forward to finding a more efficient and effective way by adaptive neighbor assignments for affinity matrix construction to address the above limitation of spectral clustering. It tries to learn an affinity matrix from the view of global data distribution. Meanwhile, we propose a deep learning framework with fully connected layers to learn a mapping function for the purpose of replacing the traditional eigen-decomposition of the Laplacian matrix. Extensive experimental results have illustrated the competitiveness of the proposed algorithm. It is significantly superior to the existing clustering algorithms in the experiments of both toy datasets and real-world datasets.

Topics & Concepts

Cluster analysisSpectral clusteringComputer scienceArtificial intelligenceLaplacian matrixCanopy clustering algorithmUnsupervised learningCURE data clustering algorithmCorrelation clusteringMatrix (chemical analysis)Pattern recognition (psychology)Machine learningData miningTheoretical computer scienceComposite materialGraphMaterials scienceFace and Expression RecognitionComplex Network Analysis TechniquesRemote-Sensing Image Classification