Multi-label learning algorithm with SVM based association
Multi-label learning algorithm with SVM based association作者机构:Key Laboratory of Electronic and Communication EngineeringHeilongjiang University School of Electronics and Information EngineeringHarbin Institute of Technology
出 版 物:《High Technology Letters》 (高技术通讯(英文版))
年 卷 期:2019年第25卷第1期
页 面:97-104页
核心收录:
基 金:Support by the National High Technology Research and Development Program of China(No.2012AA120802) National Natural Science Foundation of China(No.61771186) Postdoctoral Research Project of Heilongjiang Province(No.LBH-Q15121) Undergraduate University Project of Young Scientist Creative Talent of Heilongjiang Province(No.UNPYSCT-2017125)
主 题:multi-label learning missing labels association support vector machine(SVM)
摘 要:Multi-label learning is an active research area which plays an important role in machine learning. Traditional learning algorithms, however, have to depend on samples with complete labels. The existing learning algorithms with missing labels do not consider the relevance of labels, resulting in label estimation errors of new samples. A new multi-label learning algorithm with support vector machine(SVM) based association(SVMA) is proposed to estimate missing labels by constructing the association between different labels. SVMA will establish a mapping function to minimize the number of samples in the margin while ensuring the margin large enough as well as minimizing the misclassification probability. To evaluate the performance of SVMA in the condition of missing labels, four typical data sets are adopted with the integrity of the labels being handled manually. Simulation results show the superiority of SVMA in dealing with the samples with missing labels compared with other models in image classification.