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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
heguji
- 非参数统计学中非参数回归的简单应用核回归程序,应用范围广泛,不需要知道样本的分布就可以使用该方法。-Non-parametric statistical regression Nonparametric kernel regression of the simple application procedure, a wide range of applications, does not need to know the distribution of the samples you can u
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
support-vector-machine
- 支持向量机非线性回归通用matlab程序,本程序使用支持向量机法,实现对数据的非线性回归,核函数的设定和修改在函数内部进行,数据预处理在函数外部进行,简单易懂,希望能对大家有所帮助-Universal non-linear regression support vector machine matlab program, this program uses support vector machine method to achieve non-linear regression of data
processing
- 基于结构张量的核回归非均匀插值算法及其在图像处理中的应用-Structure tensor based on non-uniform interpolation kernel regression algorithm and its application in image processing
matlab-nonparamatric
- 两种非参数估计方法 核估计 局部线性估计-kernel smoothing local constant regression
lwppredict
- LWP是一种Matlab / Octave工具箱实现局部加权多项式回归(也被称为局部回归/局部加权散点平滑/黄土/ LOWESS和核平滑)。使用此工具箱,您可以使用九个具有度量窗口宽度或最近邻窗口宽度的任意一个内核来拟合任意维度的数据的局部多项式。还提供了一个优化内核带宽的函数。优化可采用留一交叉验证,GCV,AICC、AIC,FPE,T,执行,或单独的验证数据。鲁棒拟合也可用。(LWP is a Matlab/Octave toolbox implementing Locally Weight
lwpparams
- LWP是一种Matlab / Octave工具箱实现局部加权多项式回归(也被称为局部回归/局部加权散点平滑/黄土/ LOWESS和核平滑)。使用此工具箱,您可以使用九个具有度量窗口宽度或最近邻窗口宽度的任意一个内核来拟合任意维度的数据的局部多项式。还提供了一个优化内核带宽的函数。(LWP is a Matlab/Octave toolbox implementing Locally Weighted Polynomial regression (also known as Local Regre
lwpeval
- LWP是一种Matlab / Octave工具箱实现局部加权多项式回归(也被称为局部回归/局部加权散点平滑/黄土/ LOWESS和核平滑)。(LWP is a Matlab/Octave toolbox implementing Locally Weighted Polynomial regression (also known as Local Regression / Locally Weighted Scatterplot Smoothing / LOESS / LOWESS and Ke
GPflow_example.py
- 利用GPflow进行高斯过程回归,kernel有OU过程核等(Gauss Process Regression Using GPflow)
53607888elm_kernel_trainapredict
- 核极限学习机程序,可以直接调用,满足分类要求。想换求KELM回归程序。(Kernel limit learning machine program can be called directly to meet the classification requirements.Want to change KELM regression program.)
Kernel-Sliced-Inverse-Regression-master
- 核切片逆回归用于高维问题的维度缩减,属于数据驱动方法(Rough matlab code for kernel sliced inverse regression)