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Discriminative and Orthogonal Subspace Constraints-Based Nonnegative Matrix Factorization

Published: 01 November 2018 Publication History

Abstract

Nonnegative matrix factorization (NMF) is one widely used feature extraction technology in the tasks of image clustering and image classification. For the former task, various unsupervised NMF methods based on the data distribution structure information have been proposed. While for the latter task, the label information of the dataset is one very important guiding. However, most previous proposed supervised NMF methods emphasis on imposing the discriminant constraints on the coefficient matrix. When dealing with new coming samples, the transpose or the pseudoinverse of the basis matrix is used to project these samples to the low dimension space. In this way, the label influence to the basis matrix is indirect. Although, there are also some methods trying to constrain the basis matrix in NMF framework, either they only restrict within-class samples or impose improper constraint on the basis matrix. To address these problems, in this article a novel NMF framework named discriminative and orthogonal subspace constraints-based nonnegative matrix factorization (DOSNMF) is proposed. In DOSNMF, the discriminative constraints are imposed on the projected subspace instead of the directly learned representation. In this manner, the discriminative information is directly connected with the projected subspace. At the same time, an orthogonal term is incorporated in DOSNMF to adjust the orthogonality of the learned basis matrix, which can ensure the orthogonality of the learned subspace and improve the sparseness of the basis matrix at the same time. This framework can be implemented in two ways. The first way is based on the manifold learning theory. In this way, two graphs, i.e., the intrinsic graph and the penalty graph, are constructed to capture the intra-class structure and the inter-class distinctness. With this design, both the manifold structure information and the discriminative information of the dataset are utilized. For convenience, we name this method as the name of the framework, i.e., DOSNMF. The second way is based on the Fisher’s criterion, we name it Fisher’s criterion-based DOSNMF (FDOSNMF). The objective functions of DOSNMF and FDOSNMF can be easily optimized using multiplicative update (MU) rules. The new methods are tested on five datasets and compared with several supervised and unsupervised variants of NMF. The experimental results reveal the effectiveness of the proposed methods.

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    Published In

    cover image ACM Transactions on Intelligent Systems and Technology
    ACM Transactions on Intelligent Systems and Technology  Volume 9, Issue 6
    Regular Papers
    November 2018
    290 pages
    ISSN:2157-6904
    EISSN:2157-6912
    DOI:10.1145/3289398
    Issue’s Table of Contents
    Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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    Publication History

    Published: 01 November 2018
    Accepted: 01 May 2018
    Revised: 01 May 2018
    Received: 01 October 2017
    Published in TIST Volume 9, Issue 6

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    Author Tags

    1. Data representation
    2. discriminative graphs
    3. fisher’s criterion
    4. image classification
    5. nonnegative matrix factorization (NMF)

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    • Refereed

    Funding Sources

    • Program for Science and Technology Innovation Talents in Universities of Henan Province
    • National Natural Science Foundation of China
    • National Key Research and Development Program of China
    • Training Program for the Young-Backbone Teachers in Universities of Henan Province
    • Key Research Program of Frontier Sciences, CAS

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    • (2022)Robust Graph Regularized Nonnegative Matrix FactorizationIEEE Access10.1109/ACCESS.2022.319935410(86962-86978)Online publication date: 2022
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