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Discriminative Projected Clustering via Unsupervised LDA

Feiping Nie, Xia Dong, Zhanxuan Hu, Rong Wang, Xuelong Li

2022IEEE Transactions on Neural Networks and Learning Systems15 citationsDOI

Abstract

This work focuses on the projected clustering problem. Specifically, an efficient and parameter-free clustering model, named discriminative projected clustering (DPC), is proposed for simultaneously low-dimensional and discriminative projection learning and clustering, from the perspective of least squares regression. The proposed DPC, a constrained regression model, aims at finding both a transformation matrix and a binary indicator matrix to minimize the sum-of-squares error. Theoretically, a significant conclusion is drawn and used to reveal the connection between DPC and linear discriminant analysis (LDA). Experimentally, experiments are conducted on both toy and real-world data to validate the effectiveness and efficiency of DPC; experiments are also conducted on hyperspectral images to further verify its practicability in real-world applications. Experimental results demonstrate that DPC achieves comparable or superior results to some state-of-the-art clustering methods.

Topics & Concepts

Discriminative modelCluster analysisPattern recognition (psychology)Artificial intelligenceLinear discriminant analysisComputer scienceProjection (relational algebra)MathematicsAlgorithmRemote-Sensing Image ClassificationFace and Expression RecognitionImage Retrieval and Classification Techniques
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