Deep self-supervised clustering with embedding adjacent graph features

IF 3.2 Q2 AUTOMATION & CONTROL SYSTEMS Systems Science & Control Engineering Pub Date : 2022-03-09 DOI:10.1080/21642583.2022.2048321
Xiao Jiang, Pengjiang Qian, Yizhang Jiang, Yi Gu, Aiguo Chen
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Abstract

Deep clustering uses neural networks to learn the low-dimensional feature representations suitable for clustering tasks. Numerous studies have shown that learning embedded features and defining the clustering loss properly contribute to better performance. However, most of the existing studies focus on the deep local features and ignore the global spatial characteristics of the original data space. To address this issue, this paper proposes deep self-supervised clustering with embedding adjacent graph features (DSSC-EAGF). The significance of our efforts is three-fold: 1) To obtain the deep representation of the potential global spatial structure, a dedicated adjacent graph matrix is designed and used to train the autoencoder in the original data space; 2) In the deep encoding feature space, the KNN algorithm is used to obtain the virtual clusters for devising a self-supervised learning loss. Then, the reconstruction loss, clustering loss, and self-supervised loss are integrated, and a novel overall loss measurement is proposed for DSSC-EAGF. 3) An inverse-Y-shaped network model is designed to well learn the features of both the local and the global structures of the original data, which greatly improves the clustering performance. The experimental studies prove the superiority of the proposed DSSC-EAGF against a few state-of-the-art deep clustering methods.
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嵌入相邻图特征的深度自监督聚类
深度聚类使用神经网络来学习适合于聚类任务的低维特征表示。大量研究表明,学习嵌入特征和正确定义聚类损失有助于提高性能。然而,现有的研究大多侧重于深层的局部特征,而忽略了原始数据空间的全局空间特征。为了解决这个问题,本文提出了嵌入相邻图特征的深度自监督聚类(DSSC-EAGF)。我们努力的意义有三个方面:1)为了获得潜在全局空间结构的深度表示,设计了一个专用的邻接图矩阵,并用于在原始数据空间中训练自动编码器;2) 在深度编码特征空间中,KNN算法用于获得虚拟聚类,以设计自监督学习损失。然后,将重构损失、聚类损失和自监督损失相结合,提出了一种新的DSSC-EAGF整体损失测量方法。3) 设计了一个倒Y型网络模型,可以很好地学习原始数据的局部和全局结构的特征,极大地提高了聚类性能。实验研究证明了所提出的DSSC-EAGF相对于几种最先进的深度聚类方法的优越性。
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来源期刊
Systems Science & Control Engineering
Systems Science & Control Engineering AUTOMATION & CONTROL SYSTEMS-
CiteScore
9.50
自引率
2.40%
发文量
70
审稿时长
29 weeks
期刊介绍: Systems Science & Control Engineering is a world-leading fully open access journal covering all areas of theoretical and applied systems science and control engineering. The journal encourages the submission of original articles, reviews and short communications in areas including, but not limited to: · artificial intelligence · complex systems · complex networks · control theory · control applications · cybernetics · dynamical systems theory · operations research · systems biology · systems dynamics · systems ecology · systems engineering · systems psychology · systems theory
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