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Tri-regularized nonnegative matrix tri-factorization for co-clustering

机译:共簇的三正常化非负矩阵三分化

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摘要

The objective of co-clustering is to simultaneously identify blocks of similarity between the sample set and feature set. Co-clustering has become a widely used technique in data mining, machine learning, and other research areas. The nonnegative matrix tri-factorization (NMTF) algorithm, which aims to decompose an objective matrix into three low-dimensional matrices, is an important tool to achieve coclustering. However, noise is usually introduced during objective matrix factorization, and the method of square loss is very sensitive to noise, which significantly reduces the performance of the model. To solve this issue, this paper proposes a tri-regularized NMTF (TRNMTF) model for co-clustering, which combines graph regularization, Frobenius norm, and l(1) norm to simultaneously optimize the objective function. TRNMTF can execute feature selection well, enhance the sparseness of the model, adjust the eigenvalues in the low-dimensional matrix, eliminate noise in the model, and obtain cleaner data matrices to approximate the objective matrix, which significantly improves the performance of the model and its generalization ability. Furthermore, to solve the iterative optimization schemes of TRNMTF, this study converts the objective function into elemental form to infer and provide detailed iterative update rules. Experimental results on 8 data sets show that the proposed model displays superior performance. (C) 2021 Elsevier B.V. All rights reserved.
机译:共聚类的目的是同时识别样品集和特征集之间的相似性块。共聚类已成为数据挖掘,机器学习和其他研究领域的广泛使用技术。旨在将物体矩阵分解为三个低维矩阵的非负矩阵三分化(NMTF)算法是实现Coclustering的重要工具。然而,噪声通常在客观矩阵分解期间引入,方形损耗方法对噪声非常敏感,这显着降低了模型的性能。为了解决这个问题,本文提出了一种用于共聚类的三正常化NMTF(TRNMTF)模型,它将图形正规化,Frobenius规范和L(1)规范相结合,同时优化目标函数。 TRNMTF可以执行特征选择良好,增强模型的稀疏性,调整低维矩阵中的特征值,消除模型中的噪声,并获得更清晰的数据矩阵以近似客观矩阵,这显着提高了模型的性能和其泛化能力。此外,为了解决TRNMTF的迭代优化方案,本研究将目标函数转换为元素形式,以推断并提供详细的迭代更新规则。 8数据集的实验结果表明,所提出的模型显示出优越的性能。 (c)2021 elestvier b.v.保留所有权利。

著录项

  • 来源
    《Knowledge-Based Systems》 |2021年第17期|107101.1-107101.12|共12页
  • 作者单位

    Southwest Jiaotong Univ Sch Informat Sci & Technol Chengdu 611756 Peoples R China|Southwest Jiaotong Univ Inst Artificial Intelligence Chengdu 611756 Peoples R China;

    Southwest Jiaotong Univ Sch Informat Sci & Technol Chengdu 611756 Peoples R China|Southwest Jiaotong Univ Inst Artificial Intelligence Chengdu 611756 Peoples R China;

    Southwest Jiaotong Univ Sch Informat Sci & Technol Chengdu 611756 Peoples R China|Southwest Jiaotong Univ Inst Artificial Intelligence Chengdu 611756 Peoples R China;

    Natl Taiwan Univ Sci & Technol Dept Comp Sci & Informat Engn Taipei 106 Taiwan;

    Southwest Jiaotong Univ Sch Informat Sci & Technol Chengdu 611756 Peoples R China|Southwest Jiaotong Univ Inst Artificial Intelligence Chengdu 611756 Peoples R China;

    Southwest Jiaotong Univ Sch Informat Sci & Technol Chengdu 611756 Peoples R China|Southwest Jiaotong Univ Inst Artificial Intelligence Chengdu 611756 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Nonnegative matrix tri-factorization; Graph regularization; Entrywise norm; Sparsity; Co-clustering;

    机译:非负矩阵三分化;图规则化;谱系规范;稀疏性;共聚类;

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