1. 江南大学信息工程学院,江苏,无锡,214122
2. 盐城工学院信息工程学院,江苏,盐城,224001
3. 浙江大学CAD&amp
4. CG国家重点实验室,浙江,杭州,310027
网络出版:2010-07-25,
纸质出版:2010
移动端阅览
皋军, 王士同, 邓赵红. 基于全局和局部保持的半监督支持向量机[J]. 电子学报, 2010,38(7):1626-1633.
GAO Jun, WANG Shi-tong, DENG Zhao-hong. Global and Local Preserving Based Semi-supervised Support Vector Machine[J]. Acta Electronica Sinica, 2010, 38(7): 1626-1633.
<FONT face=Verdana>支持向量机(SVM)作为正则化方法的一个特例在模式识别领域得到了成功地运用,然而传统的SVM方法作为一种有监督的学习方法主要依据最大间隔原则得到决策超平面的法向量,而并没有充分考虑样本内在的几何结构以及所蕴含的判别信息. 因此,本文将线性判别分析(LDA)的类内散度和保局投影(LPP)的基本原理引入到SVM中,提出基于全局和局部保持的半监督支持向量机:GLSSVM,该方法在继承传统的SVM方法的特点的基础上,充分考虑样本间具有的全局和局部几何结构,体现样本间所蕴含的局部和全局判别信息,同时满足作为半监督方法的必须依据的一致性假设,从而在一定程度上提高了分类精度.通过在人造数据集和真实数据集上的测试表明该方法具有上述优势.
The support vector machine (SVM)
as one of special regularization methods
has been used successfully in the field of pattern recognition. However
the traditional SVM
a supervised learning methed
gets the normal vector of the decision boundary mainly according to the largest interval principle but has not considered the underlying geometric structure and the discriminant information fully. Therefore
a global and local preserving based semi-supervised support vector machine: GLSSVM
is presented in this paper by introducing the basic theories of the locality preserving projections (LPP) and the within-class scatter of linear discriminant analysis (LDA) into the SVM. This method inherits the characteristics of the traditional SVM
fully considers the global and local geometric structure between samples
shows the global and local underlying discriminant information and meets the consistency assumption which the semi-supervised method must coincides with so that the shortcomings of the supervised methods can be overcome and the classification accuracy can be increased. The tests on the artificial and real datasets show the above mentioned advantages of the GLSSVM method.
0
浏览量
1950
下载量
15
CSCD
关联资源
相关文章
相关作者
相关机构
京公网安备11010802024621