@inproceedings{acfed20d67a94d77a379e3e4dfbbaabe,
title = "An outlier-insensitive linear pursuit embedding algorithm",
abstract = "Dimension reduction techniques with the flexibility to learn a broad class of nonlinear manifold have attracted increasingly close attention since meaningful low-dimensional structures are always hidden in large number of high-dimensional natural data, such as global climate patterns, images of a face under different viewing conditions, etc. In this paper, we introduce L1-Norm Linear Pursuit Embedding (L1-LPE) algorithm, aims to find a more robust linear method in presence of outliers and unexpected samples when dealing with high-dimensional nonlinear manifold problems. To achieve this goal, a new method based on a rather different geometric intuition L1-Norm is proposed to describe the local geometric structure. L1-LPE and L2-LPE is studied and compared in this paper and experiments on both toy problems and real data problems are presented.",
keywords = "Dimension reduction, Manifold learning, Outliers",
author = "Pang, {Yan Wei} and Xin Lu and Yuan Yuan and Jing Pan",
year = "2009",
doi = "10.1109/ICMLC.2009.5212621",
language = "英语",
isbn = "9781424437030",
series = "Proceedings of the 2009 International Conference on Machine Learning and Cybernetics",
pages = "2792--2796",
booktitle = "Proceedings of the 2009 International Conference on Machine Learning and Cybernetics",
note = "2009 International Conference on Machine Learning and Cybernetics ; Conference date: 12-07-2009 Through 15-07-2009",
}