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首页> 外文期刊>ACM transactions on intelligent systems >Integrate and Conquer: Double-Sided Two-Dimensional k-Means Via Integrating of Projection and Manifold Construction
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Integrate and Conquer: Double-Sided Two-Dimensional k-Means Via Integrating of Projection and Manifold Construction

机译:整合与征服:通过投影与流形构造的整合实现二维二维k均值

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摘要

In this article, we introduce a novel, general methodology, called integrate and conquer, for simultaneously accomplishing the tasks of feature extraction, manifold construction, and clustering, which is taken to be superior to building a clustering method as a single task. When the proposed novel methodology is used on two-dimensional (2D) data, it naturally induces a new clustering method highly effective on 2D data. Existing clustering algorithms usually need to convert 2D data to vectors in a preprocessing step, which, unfortunately, severely damages 2D spatial information and omits inherent structures and correlations in the original data. The induced new clustering method can overcome the matrix-vectorization-related issues to enhance the clustering performance on 2D matrices. More specifically, the proposed methodology mutually enhances three tasks of finding subspaces, learning manifolds, and constructing data representation in a seamlessly integrated fashion. When used on 2D data, we seek two projection matrices with optimal numbers of directions to project the data into low-rank, noise-mitigated, and the most expressive subspaces, in which manifolds are adaptively updated according to the projections, and new data representation is built with respect to the projected data by accounting for nonlinearity via adaptive manifolds. Consequently, the learned subspaces and manifolds are clean and intrinsic, and the new data representation is discriminative and robust. Extensive experiments have been conducted and the results confirm the effectiveness of the proposed methodology and algorithm.
机译:在本文中,我们介绍了一种新颖的通用方法,称为集成和征服,用于同时完成特征提取,流形构建和聚类的任务,这被认为优于将聚类方法构建为单个任务。当将提出的新颖方法用于二维(2D)数据时,自然会引入一种对2D数据非常有效的新聚类方法。现有的聚类算法通常需要在预处理步骤中将2D数据转换为矢量,不幸的是,这会严重破坏2D空间信息并忽略原始数据中的固有结构和相关性。引入的新聚类方法可以克服与矩阵向量化有关的问题,从而提高二维矩阵的聚类性能。更具体地,所提出的方法相互增强了以无缝集成的方式寻找子空间,学习流形并构造数据表示这三个任务。当用于2D数据时,我们寻求具有最佳方向数的两个投影矩阵,以将数据投影到低秩,噪声减轻且表达最强的子空间中,其中流形根据投影进行自适应更新,并提供新的数据表示形式通过考虑自适应歧管的非线性来针对投影数据构建。因此,学习到的子空间和流形是干净的和固有的,而新的数据表示是有区别的且稳定的。已经进行了广泛的实验,结果证实了所提出的方法和算法的有效性。

著录项

  • 来源
    《ACM transactions on intelligent systems》 |2018年第5期|57.1-57.25|共25页
  • 作者单位

    Qingdao Univ Coll Comp Sci & Technol 308 Ningxia Rd Qingdao 266071 Shandong Peoples R China|Southern Illinois Univ Carbondale Dept Comp Sci 1263 Lincoln Dr Carbondale IL 62901 USA;

    Univ Elect Sci & Technol China Sch Comp Sci & Engn 4 North Jianshe Rd Chengdu 611731 Sichuan Peoples R China;

    Guangdong Univ Technol Sch Automat 100 West Waihuan Rd Guangzhou 510006 Guangdong Peoples R China;

    Univ Kentucky Inst Biomed Informat 725 Rose St Lexington KY 40536 USA|Univ Kentucky Dept Comp Sci 725 Rose St Lexington KY 40536 USA;

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

    Clustering; unsupervised learning; two-dimensional data; feature extraction;

    机译:集群;无监督学习;二维数据;特征提取;

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