• 中国精品科技期刊
  • CCF推荐A类中文期刊
  • 计算领域高质量科技期刊T1类
Advanced Search
Yu Xiao, Liu Hui, Lin Yuxiu, Zhang Caiming. Consensus Guided Auto-Weighted Multi-View Clustering[J]. Journal of Computer Research and Development, 2022, 59(7): 1496-1508. DOI: 10.7544/issn1000-1239.20210126
Citation: Yu Xiao, Liu Hui, Lin Yuxiu, Zhang Caiming. Consensus Guided Auto-Weighted Multi-View Clustering[J]. Journal of Computer Research and Development, 2022, 59(7): 1496-1508. DOI: 10.7544/issn1000-1239.20210126

Consensus Guided Auto-Weighted Multi-View Clustering

Funds: This work was supported by the National Natural Science Foundation of China (62072274) and Shandong Provincial Transfer and Transformation Project of Scientific and Technological Achievements (2021LYXZ021).
More Information
  • Published Date: June 30, 2022
  • As it becomes increasingly easier to obtain multi-modal or multi-view data, multi-view clustering has gained much more attention recently. However, many methods learn the affinity matrix from the original data and may lead to unsatisfying results because of the noise in the raw dataset. Besides, some methods neglect the diversity of roles played by different views and take them equally. In this paper, we propose a novel Markov chain algorithm named consensus guided auto-weighted multi-view clustering (CAMC) to tackle these problems. A transition probability matrix is constructed for each view to learn the affinity matrix indirectly to reduce the effects of redundancies and noise in the original data. The consensus transition probability matrix is obtained in an auto-weighted way, in which the optimal weight for each view is gained automatically. Besides, a constrained Laplacian rank is utilized on the consensus transition probability to ensure that the number of the connected components in the Laplacian graph is exactly equal to that of the clusters. Moreover, an optimization strategy based on alternating direction method of multiplier (ADMM) is proposed to solve the problem. The effectiveness of the proposed algorithm is verified on a toy dataset. Extensive experiments on seven real-world datasets with different types show that CAMC outperforms the other eight benchmark algorithms in terms of clustering.
  • Related Articles

    [1]Hu Hao, Liu Yuling, Zhang Hongqi, Yang Yingjie, Ye Runguo. Route Prediction Method for Network Intrusion Using Absorbing Markov Chain[J]. Journal of Computer Research and Development, 2018, 55(4): 831-845. DOI: 10.7544/issn1000-1239.2018.20170087
    [2]Tang Wanning, Wang Mingwen, Wan Jianyi. Markov Network Retrieval Model Based on Document Cliques[J]. Journal of Computer Research and Development, 2014, 51(10): 2248-2254. DOI: 10.7544/issn1000-1239.2014.20130343
    [3]Wu Caihua, Liu Juntao, Peng Shirui, Li Haihong. Deriving Markov Chain Usage Model from UML Model[J]. Journal of Computer Research and Development, 2012, 49(8): 1811-1819.
    [4]Zhang Zhan, Liu Guangjie, Dai Yuewei, Wang Zhiquan. A Self-Adaptive Image Steganography Algorithm Based on Cover-Coding and Markov Model[J]. Journal of Computer Research and Development, 2012, 49(8): 1668-1675.
    [5]Bao Xiao'an, Yao Lan, Zhang Na, and Song Jinyu. Adaptive Software Testing Based on Controlled Markov Chain[J]. Journal of Computer Research and Development, 2012, 49(6): 1332-1338.
    [6]Du Yi, Zhang Ting, Lu Detang, Li Daolun. An Interpolation Method Using an Improved Markov Model[J]. Journal of Computer Research and Development, 2012, 49(3): 565-571.
    [7]Lü Mingqi, Chen Ling, Chen Gencai. Position Prediction Based on Adaptive Multi-Order Markov Model[J]. Journal of Computer Research and Development, 2010, 47(10): 1764-1770.
    [8]Zhao Jing, Huang Houkuan, and Tian Shengfeng. Protocol Anomaly Detection Based on Hidden Markov Model[J]. Journal of Computer Research and Development, 2010, 47(4): 621-627.
    [9]Wang Wenhui, Feng Qianjin, Chen Wufan. Segmentation of Brain MR Images Based on the Measurement of Difference of Mutual Information and Gauss-Markov Random Field Model[J]. Journal of Computer Research and Development, 2009, 46(3): 521-527.
    [10]Tian Xinguang, Gao Lizhi, Sun Chunlai, Zhang Eryang. Anomaly Detection of Program Behaviors Based on System Calls and Homogeneous Markov Chain Models[J]. Journal of Computer Research and Development, 2007, 44(9): 1538-1544.
  • Cited by

    Periodical cited type(6)

    1. 徐雪峰,郭广伟,黄余. 改进全卷积神经网络的遥感图像小目标检测. 机械设计与制造. 2024(10): 38-42 .
    2. 刘雯雯,汪皖燕,程树林. 融合项目热门惩罚因子改进协同过滤推荐方法. 计算机技术与发展. 2023(03): 15-19 .
    3. 冯勇,刘洋,王嵘冰,徐红艳,张永刚. 面向用户需求的生成对抗网络多样性推荐方法. 小型微型计算机系统. 2023(06): 1192-1197 .
    4. 冯晨娇,宋鹏,张凯涵,梁吉业. 融合社交网络信息的长尾推荐方法. 模式识别与人工智能. 2022(01): 26-36 .
    5. 韩迪,陈怡君,廖凯,林坤玲. 推荐系统中的准确性、新颖性和多样性的有效耦合与应用. 南京大学学报(自然科学). 2022(04): 604-614 .
    6. 甘亚男,耿生玲,郝立. 超贝叶斯图模型及其联结树的构建. 青海师范大学学报(自然科学版). 2021(02): 42-48 .

    Other cited types(8)

Catalog

    Article views (183) PDF downloads (123) Cited by(14)

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return