1. 浙江大学宁波理工学院信息科学与工程学院,浙江,宁波,315100
2. 浙江工商职业技术学院电子与信息工程学院,浙江,宁波,315012
3. 浙江大学宁波理工学院信息科学与工程学院,浙江,宁波,315100
4. 浙江工商职业技术学院电子与信息工程学院,浙江,宁波,315012
纸质出版:2014
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陶剑文, 姚奇富. 稀疏特征空间嵌入正则化:鲁棒的半监督学习框架[J]. 电子学报, 2014,42(11):2198-2204.
TAO Jian-wen, YAO Qi-fu. Sparse Feature Space Embedding Regularization:A Framework of Robust Semi-Supervised Learning[J]. Acta Electronica Sinica, 2014, 42(11): 2198-2204.
陶剑文, 姚奇富. 稀疏特征空间嵌入正则化:鲁棒的半监督学习框架[J]. 电子学报, 2014,42(11):2198-2204. DOI: 10.3969/j.issn.0372-2112.2014.11.011.
TAO Jian-wen, YAO Qi-fu. Sparse Feature Space Embedding Regularization:A Framework of Robust Semi-Supervised Learning[J]. Acta Electronica Sinica, 2014, 42(11): 2198-2204. DOI: 10.3969/j.issn.0372-2112.2014.11.011.
在机器学习领域
半监督学习作为一种有力工具吸引了越来越多的关注
其利用少量带标签数据和大量无标签数据进行有效学习
其中基于图的半监督学习方法因其优雅的数学形式和良好的学习性能而引起更广泛的研究.针对现有基于图的半监督学习方法所存在的模型参数敏感和数据判别信息不充分等问题
提出一种稀疏特征空间嵌入正则化(Sparse Feature Space embedding Regularization
SFSR)半监督学习框架
其主要思想为:首先分别将原始数据嵌入到线性特征空间
然后利用特征空间嵌入投影点集来稀疏重构原始数据
随后在由原始数据线性张成的标签空间通过保留这种稀疏表示关系来构建一个Laplacian正则化项
或称SFSR
最后提出一个鲁棒的基于SFSR的半监督学习框架
在几个实际基准数据库上的综合实验结果证实了所提框架的鲁棒有效性.
Semi-supervised learning(SSL)
as a powerful tool to learn from a limited number of labeled data and a large number of unlabeled data
has been attracting increasing attention in machine learning community.Of various SSL methods
graph based approaches have attracted more extensive research due to their elegant mathematical formulation and good performance.However
there may exist several nontrivial concerns such as such as model parameters sensitiveness and insufficient discriminative information in data space
etc
in existing graph based SSL approaches.To these ends
in this paper
we propose a robust Sparse Feature Space embedding Regularization(SFSR)SSL framework.The main idea of the proposed SFSR includes three folds:(1)linearly embedding input data into its feature spaces(2)sparsely reconstructing input data using its feature space embedding projection images;and(3)preserving the same sparse representation relationship among labels of data as that among data in some label space spanned linearly by input data
thus constructing a novel sparse nearest feature space embedding regularizer
coined as SFSR.The comprehensive experimental results on several real-world benchmark databases are presented to demonstrate the significantly robust effectiveness of our proposed method.
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