搜索资源列表
svm_toolbox
- 支持向量机工具箱,其中包含MATLAB演示程序和一些基本的函数(计算核函数的函数、支持向量机训练函数和参数选择交叉验证函数等)。-SVM Toolbox, which contains MATLAB demo programs and some of the basic functions (Calculation Kernel function, SVM training function and parameter selection cross-validation functions,
SvmFu-3.1
- This is SvmFu, a package for training and testing support vector machines (SVMs). It s written in C++. It uses templates. The advantage of templates is that the types of kernel values and data points can be varied to suit the problem.-This is S
svm_perf.tar.gz
- SVMstruct is a Support Vector Machine (SVM) algorithm for predicting multivariate or structured outputs. It performs supervised learning by approximating a mapping h: X --> Y using labeled training examples (x1,y1), ..., (xn,yn). Unlike regula
csedit_03_08_22
- windows 内核培训资料,内核编程很好的参考资料-windows core training materials, a good reference for kernel programming
svm_perf
- SVMstruct is a Support Vector Machine (SVM) algorithm for predicting multivariate or structured outputs. It performs supervised learning by approximating a mapping h: X --> Y using labeled training examples (x1,y1), ..., (xn,yn). Unlike reg
PolySVC
- Construct a non-linear SVM classifier with a polynomial kernel from the training Samples and Labels
PPSO-SVMfaceS
- 基于PSO训练SVM的人脸识别利用支持向量机在学习能力方面表现的良好性能,结合核主元分析特征提取方法,将将其应用于人脸识别中,该方法在实验中表现了良好的识别性能,为人脸识别领域提供了一条新的识别途径 已通过测试。 -Good performance, performance in the ability to learn the use of support vector machines based on PSO training SVM face recognition combined
libsvm-3.20
- 利用svm进行分类器 很方便实用 强大 简介-Use svm classifier 13# highest feature index 3# kernel parameter-d 1# kernel parameter-g 1# kernel parameter-s 1# kernel parameter-r 270# number of training documents 117# number of support vectors plus 1
mlclass-ex6
- 支持向量机,实现2或多分类,基于matlab仿真,内有说明-ex6.m- Octave scr ipt for the rst half of the exercise ex6data1.mat- Example Dataset 1 ex6data2.mat- Example Dataset 2 ex6data3.mat- Example Dataset 3 svmTrain.m- SVM rraining function svmPredict.m- SVM p
LSSVMlabv
- trainlssvm函数用于训练模型,主要有两种使用形式: [alpha, b] = trainlssvm({X,Y,type,gam,kernel_par,kernel,preprocess}) model = trainlssvm(model)或者model = trainlssvm(model, X, Y) X和Y分别是训练样本集的输入和输出数据。(The trainlssvm function is used for training models, and there are t