Multi-Label Learning with Local Similarity of Samples

Multi-label learning has been successfully applied to solve instance multi-semantics problems. Moreover, the topology information of samples is often adopted in existing works to improve the prediction performance, in which the similarity of samples is usually calculated in the entire feature space. However, in real-world applications, each label is often determined by a subset of the original features, so when we focus on different labels, the similarity of two instances may be different. In this paper, we propose a multi-label learning method by exploiting the local similarity of samples. Specifically, the smoothness assumption is applied to assume that if the feature subset is similar between samples, the corresponding label should be similar. In addition, L1 regularization is also adopted to sparse the weight coefficients when constraining the output space of the instance. The experimental results on several data sets validate the effectiveness of the proposed method.

[1]  Xindong Wu,et al.  Learning Label Specific Features for Multi-label Classification , 2015, 2015 IEEE International Conference on Data Mining.

[2]  Chenliang Li,et al.  Multi-label dataless text classification with topic modeling , 2018, Knowledge and Information Systems.

[3]  Zheru Chi,et al.  Multi-instance multi-label image classification: A neural approach , 2013, Neurocomputing.

[4]  Min-Ling Zhang,et al.  Feature-Induced Labeling Information Enrichment for Multi-Label Learning , 2018, AAAI.

[5]  Xiaogang Yang,et al.  Multi-Label Learning With Label Specific Features Using Correlation Information , 2019, IEEE Access.

[6]  Le Song,et al.  Kernelized Sorting , 2008, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[7]  Grigorios Tsoumakas,et al.  Multi-Label Classification of Music into Emotions , 2008, ISMIR.

[8]  Bianca Zadrozny,et al.  Categorizing feature selection methods for multi-label classification , 2016, Artificial Intelligence Review.

[9]  Bernhard Schölkopf,et al.  Measuring Statistical Dependence with Hilbert-Schmidt Norms , 2005, ALT.

[10]  Yuhong Guo,et al.  Semi-Supervised Multi-Label Learning with Incomplete Labels , 2015, IJCAI.

[11]  Yale Song,et al.  Improving Pairwise Ranking for Multi-label Image Classification , 2017, 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[12]  Min-Ling Zhang,et al.  A Review on Multi-Label Learning Algorithms , 2014, IEEE Transactions on Knowledge and Data Engineering.

[13]  Jing-Yu Yang,et al.  Multi-label learning with label-specific feature reduction , 2016, Knowl. Based Syst..

[14]  Min-Ling Zhang,et al.  Lift: Multi-Label Learning with Label-Specific Features , 2011, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[15]  Qiang Yang,et al.  Music Emotion Recognition by Multi-label Multi-layer Multi-instance Multi-view Learning , 2014, ACM Multimedia.

[16]  Ji Wu,et al.  Multi-label text classification based on the label correlation mixture model , 2017, Intell. Data Anal..

[17]  Xiao Zhang,et al.  Multi-label Learning with Label-Specific Feature Selection , 2017, ICONIP.

[18]  Junbin Gao,et al.  Learning graph structure for multi-label image classification via clique generation , 2015, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[19]  Xiu-Yi Jia,et al.  Joint Label-Specific Features and Correlation Information for Multi-Label Learning , 2020, Journal of Computer Science and Technology.

[20]  Arvind Ganesh,et al.  Fast Convex Optimization Algorithms for Exact Recovery of a Corrupted Low-Rank Matrix , 2009 .

[21]  Sheng-Jun Huang,et al.  Incremental Multi-Label Learning with Active Queries , 2020, Journal of Computer Science and Technology.

[22]  Zhi-Hua Zhou,et al.  ML-KNN: A lazy learning approach to multi-label learning , 2007, Pattern Recognit..

[23]  Mahmoud Al-Ayyoub,et al.  Multi-Label Emotion Classification for Arabic Tweets , 2019, 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS).

[24]  Yun Li,et al.  Graph-Margin Based Multi-label Feature Selection , 2016, ECML/PKDD.

[25]  Dae-Won Kim,et al.  Feature selection for multi-label classification using multivariate mutual information , 2013, Pattern Recognit. Lett..

[26]  Zhi-Hua Zhou,et al.  Multi-label Learning , 2017, Encyclopedia of Machine Learning and Data Mining.

[27]  ZhouZhi-Hua,et al.  Multilabel dimensionality reduction via dependence maximization , 2010 .

[28]  Amanda Clare,et al.  Knowledge Discovery in Multi-label Phenotype Data , 2001, PKDD.

[29]  Eisaku Maeda,et al.  Maximal Margin Labeling for Multi-Topic Text Categorization , 2004, NIPS.

[30]  Janez Demsar,et al.  Statistical Comparisons of Classifiers over Multiple Data Sets , 2006, J. Mach. Learn. Res..

[31]  Zhi-Hua Zhou,et al.  Multi-Label Learning with Weak Label , 2010, AAAI.