Welcome to Journal of Beijing Institute of Technology
Volume 26Issue 3
.
Turn off MathJax
Article Contents
Zhenwu Wang, Longbing Cao. Coupled Attribute Similarity Learning on Categorical Data for Multi-Label Classification[J]. JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 2017, 26(3): 404-410. doi: 10.15918/j.jbit1004-0579.201726.0317
Citation: Zhenwu Wang, Longbing Cao. Coupled Attribute Similarity Learning on Categorical Data for Multi-Label Classification[J].JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 2017, 26(3): 404-410.doi:10.15918/j.jbit1004-0579.201726.0317

Coupled Attribute Similarity Learning on Categorical Data for Multi-Label Classification

doi:10.15918/j.jbit1004-0579.201726.0317
  • Received Date:2016-10-11
  • In this paper a novel coupled attribute similarity learning method is proposed with the basis on the multi-label categorical data (CASonMLCD). The CASonMLCD method not only computes the correlations between different attributes and multi-label sets using information gain, which can be regarded as the important degree of each attribute in the attribute learning method, but also further analyzes the intra-coupled and inter-coupled interactions between an attribute value pair for different attributes and multiple labels. The paper compared the CASonMLCD method with the OF distance and Jaccard similarity, which is based on the MLKNN algorithm according to 5 common evaluation criteria. The experiment results demonstrated that the CASonMLCD method can mine the similarity relationship more accurately and comprehensively, it can obtain better performance than compared methods.
  • loading
  • [1]
    Grigorios Tsoumakas,Ioannis Katakis.Multi-label classification:an overview[J].International Journal of Data Warehousing and Mining,2007,3(3):1-17.
    [2]
    Streich A,Buhmann J.Classification of multi-labeled data:a generative approach[J].Machine Learning and Knowledge Discovery in Databases,2008, 48(7):2279-2289.
    [3]
    Wu Baoyuan,Lyu Siwei,Hu Baogang,et al. Multi-label learning with missing labels for image annotation and facial action unit recognition[J].Pattern Recognition,2015,
    [4]
    Boutell Matthew, Luo Jiebo, Shen Xipeng, et al. Learning multi-label scene classification[J].Pattern Recognition,2004,37:1757-16.
    [5]
    Nanculef Ricardo,Flaounas llias,Cristianini Nello.Efficient classification of multi-labeled text streams by clashing[J]. Expert Systems with Applications,2014,41(11):5431-5450.
    [6]
    Singer Y Boos. Texter:a boosting-based system for text categorization[J].Machine Learning,2000,39(2/3):135-168.
    [7]
    Alves Roberto T, Delgado Myriarn R, Freitas Alex A. Multi-label hierarchical classification of protein functions with artificial immune systems[C]//3rd Brazilian Symposium on Bioinformatics (BSB 2008), 2008, 5167:1-12.
    [8]
    Yu Guoxian, Domeniconi Carlotta, Rangwala Huzefa, et al. Transductive multi-label ensemble classification for protein function prediction[C]//Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, 2012:1077-1085.
    [9]
    Zhang Minling. An improved multi-label lazy learning approach[J]. Journal of Computer Research and Development,2012, 49(11):2271-2282.
    [10]
    Elisseeff A, Weston J. A kernel method for multi-labelled classification[C]//Advances in Neural Information Processing System 14.Cambridge,MA:MIT Press,2002:681-687.
    [11]
    Zhang Minling, Zhou Zhihua. ML-KNN:a lazy learning approach to multi-label learning[J].Pattern Recogintion,2007,40:2038-2048.
    [12]
    Liu Chunming,Cao Longbing.A coupled k-nearest neighbor algorithm for multi-label classification[C]//Pacific-Asia Conference on Knowledge Discovery and Data Mining, 2015:176-187.
    [13]
    Thierry Denoeux, Zoulficar Younes, Fahed Abdallah. Representing uncertainty on set-valued variables using belief functions[J]. Artificial Intelligence, 2010, 174:479-499.
    [14]
    Cheng Weiwei, Eyke Hüllermeier. Combining instance-based learning and logistic regression for multilabel classification[J].Machine Learning, 2009, 76:211-225.
    [15]
    Wang Zhenwu, Cao Longbing. Novel apriori-based multi-lable learning algorithm by exploiting coupled label relationship[J]. Journal of Beijing Institute of Technology, 2017,26(2):206-214.
    [16]
    Wang Can,Dong Xiangjun,Zhou Fei,et al.Coupled attributed similarity learning on categorical data[J].IEEE Transactions on Networks and Learning System,2015,26(4):781-797.
    [17]
    Montañes E, Senge R, Barranquero J, et al. Dependent binary relevance models for multi-label classification[J]. Pattern Recognition, 2014, 47(3):1494-1508.
    [18]
    Rauber T W, Mello L H, Rocha V F, et al. Recursive dependent binary relevance model for multi-label classification[J]. Pattern Recognition, 2014, 47(3):206-217.
    [19]
    Wang S, Wang J, Wang Z, et al. Enhancing multi-label classification by modeling dependencies among labels[J]. Pattern Recognition, 2014, 47(10):3405-3413.
    [20]
    Guo Y, Gu S. Multi-label classification using conditional dependency networks[C]//IJCAI 2011, Proceedings of the Twenty-Second International Joint Conference on Artificial Intelligence-Volume Two,Barcelona, Catalonia, Spain, 2011:1300-1305.
    [21]
    Fu B, Xu G, Wang Z, et al. Leveraging supervised label dependency propagation for multi-label learning[C]//The IEEE 13th International Conference on Data Mining. Dallas, TX, USA:Institute of Electrical and Electronics Engineers Inc,2013:1061-1066.
    [22]
    Younes Z, Abdallah F, Denoeux T. Multi-label classification algorithm derived from K-nearest neighbor rule with label dependencies[C]//Signal Processing Conference 2008, European,IEEE, 2008:1-5.
    [23]
    Zhang M. An improved multi-label lazy learning approach[J]. Journal of Computer Research & Development, 2012, 49(11):2271-2282.
    [24]
    Fu B, Wang Z, Pan R, et al. Learning tree structure of label dependency for multi-label learning[C]//16th Pacific-Asia Conference on Advances in Knowledge Discovery and Data Mining. Kuala Lumpur, Malaysia:Springer Verlag, 2012:159-170.
    [25]
    Wang L, Zhao Z, Su F. Efficient multi-modal hypergraph learning for social image classification with complex label correlations[J]. Neurocomputing, 2015, 171(C):242-251.
    [26]
    Xia Hui, Fang Bin, Gao Min,et al. A novel item anomaly detection approach against shilling attacks in collaborative recommendation systems using the dynamic time interval segmentation technique[J].Information Sciences,2015,306:150-165.
  • 加载中

Catalog

    通讯作者:陈斌, bchen63@163.com
    • 1.

      沈阳化工大学材料科学与工程学院 沈阳 110142

    1. 本站搜索
    2. 百度学术搜索
    3. 万方数据库搜索
    4. CNKI搜索

    Article Metrics

    Article views (705) PDF downloads(1425) Cited by()
    Proportional views
    Related

    /

      Return
      Return
        Baidu
        map