Feiping NieZheng WangRong WangXuelong Li
Semi-supervised learning as one of most attractive problems in machine learning research field has aroused broad attentions in recent years. In this paper, we propose a novel locality preserved dimensionality reduction framework, named Semi-supervised Adaptive Local Embedding learning (SALE), which learns a local discriminative embedding by constructing a $k_1$ Nearest Neighbors ( $k_1$ NN) graph on labeled data, so as to explore the intrinsic structure, i.e., sub-manifolds from non-Gaussian labeled data. Then, mapping all samples into learned embedding and constructing another $k_2$ NN graph on all embedded data to explore the global structure of all samples. Therefore, the unlabeled data and their corresponding labeled neighbors can be clustered into same sub-manifold, so as to improve the discriminative power of embedded data. Furthermore, we propose two semi-supervised dimensionality reduction methods with orthogonal and whitening constraints based on proposed SALE framework. An efficient alternatively iterative optimization algorithm is developed to solve the NP-hard problem in our models. Extensive experiments conducted on several synthetic and real-world data sets demonstrate the superiorities of our methods on local structure exploration and classification task.
Jia WeiJiabing WangQianli MaXuan Wang
Lin LiHongchun QuZhaoni LiJian ZhengFei Guo
Alex MoreheadWatchanan ChantapakulJianlin Cheng
Daoqiang ZhangZhi‐Hua ZhouSongcan Chen
Mingbo ZhaoHaijun ZhangZhao Zhang