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Semi-supervised discriminant analysis based on sparse-coding theory
Zhang, Qi ; Chu, Tianguang
2016
DOI10.1109/ChiCC.2016.7554476
英文摘要We consider the problem of semi-supervised graph-based learning. Since in semi-supervised settings, the labeled information is limited, we first propose l��-norm-based label propagation (��-SLP) model to estimate the soft labels by using small set of labeled and large amount of unlabeled training data, and thereby enrich the supervised information. Based on the a-SLP results, we conduct semi-supervised discriminant analysis and present graph-based embedding (SGE) approach by incorporating the estimated soft labels with the local geometric information of both the within-class and between-class training data. Within-class affinity matrices and between-class weight matrix are introduced to preserve the propagated label information and local geometric information of data. This gets rid of the problem that merely concerning about the soft labels may lead to errors. By minimizing the locality-preserved within-class distances and maximizing the weighted between-class separability, subspaces that characterize the intrinsic data structure can be well captured. Experiments in face recognition verify the validity and effectiveness of the proposed methods. ? 2016 TCCT.; EI; 7082-7087; 2016-August
会议录35th Chinese Control Conference, CCC 2016
语种英语
内容类型会议论文
源URL[http://ir.pku.edu.cn/handle/20.500.11897/449258]  
专题工学院
推荐引用方式
GB/T 7714
Zhang, Qi,Chu, Tianguang. Semi-supervised discriminant analysis based on sparse-coding theory[C]. 见:.
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