- powerlinemodem 有关电力线通信资料
- sistema-de-upload sistema de upload sistema de upload sistema de upload
- Matlab-parallel-programming 《实战Matlab之并行程序设计》一书的程序代码
- printer .h: header file for .c.
- MAG-PPC 基于多智能题遗传算法的投影寻踪聚类模型MATLAB程序
- encoder and gsm module text code csm will receive start and on the out put and receive stop to stop the output
文件名称:SVM
介绍说明--下载内容来自于网络,使用问题请自行百度
In this paper, we show how support vector machine (SVM) can be
employed as a powerful tool for $k$-nearest neighbor (kNN)
classifier. A novel multi-class dimensionality reduction approach,
Discriminant Analysis via Support Vectors (SVDA), is introduced by
using the SVM. The kernel mapping idea is used to derive the
non-linear version, Kernel Discriminant via Support Vectors (SVKD).
In SVDA, only support vectors are involved to obtain the
transformation matrix. Thus, the computational complexity can be
greatly reduced for kernel based feature extraction. Experiments
carried out on several standard databases show a clear improvement
on LDA-based recognition
employed as a powerful tool for $k$-nearest neighbor (kNN)
classifier. A novel multi-class dimensionality reduction approach,
Discriminant Analysis via Support Vectors (SVDA), is introduced by
using the SVM. The kernel mapping idea is used to derive the
non-linear version, Kernel Discriminant via Support Vectors (SVKD).
In SVDA, only support vectors are involved to obtain the
transformation matrix. Thus, the computational complexity can be
greatly reduced for kernel based feature extraction. Experiments
carried out on several standard databases show a clear improvement
on LDA-based recognition
相关搜索: knn SVM MATLAB
svm knn
feature transformation
feature reduction
LDA
SVM kernel
knn feature
k-t
knn classifier matlab
linear classifier
(系统自动生成,下载前可以参看下载内容)
下载文件列表
Nouveau dossier/oneoutsvnn.m
Nouveau dossier/SVDA.m
Nouveau dossier/SVDA_example.m
Nouveau dossier
Nouveau dossier/SVDA.m
Nouveau dossier/SVDA_example.m
Nouveau dossier
本网站为编程资源及源代码搜集、介绍的搜索网站,版权归原作者所有! 粤ICP备11031372号
1999-2046 搜珍网 All Rights Reserved.