理论学习:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

 

独立成分分析ICA历史

Ref: Lecture 15 | Machine Learning (Stanford) - NG

From: https://wenku.baidu.com/view/ad0973b94028915f804dc2aa.html

解ICA的若干种方法:

  • ICA by Maximization of Nongaussianity       <----
  • ICA by Maximum Likelihood Estimation  <----
  • ICA by Minimization of Mutual Information
  • ICA by Tensorial Methods
  • ICA by Nonlinear Decorrelation and Nonlinear PCA

 

ICA by Maximization of Nongaussianity

基本背景:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

[Scikit-learn] 2.5 Dimensionality reduction - ICA

 

估值原理:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

 

解决方案:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

方法有很多,基本都是:度量方法+算法,比如 "negentropy近似" + "基于固定点迭代方法"。

 

与PCA的比较:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

 

论文阅读杂记:ICA及其在数字图像处理中的应用

应用例子,特征提取方法 + svm 进行人脸识别

[Scikit-learn] 2.5 Dimensionality reduction - ICA

[Scikit-learn] 2.5 Dimensionality reduction - ICA

[Scikit-learn] 2.5 Dimensionality reduction - ICA

[Scikit-learn] 2.5 Dimensionality reduction - ICA

 


Centered and whitened

Ref: http://www.cnblogs.com/tornadomeet/archive/2013/03/21/2973231.html

[Scikit-learn] 2.5 Dimensionality reduction - ICA

 

优化方法 

基于固定点迭代的方法:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

看上去很像牛顿法,why?

 

 

ICA by Maximum Likelihood Estimation

Ref: Lecture 15 | Machine Learning (Stanford) - NG

FromICA教程之一【推荐!】

记录随机向量m次,则形成数据集:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

实例:在一个大厅里,有n个麦克风记录大厅的声音,每秒一个记录,一共记录m秒。

麦克风记录的混合声音,多个麦克风记录不同位置的混合声音。

ICA的目标,就是从混声录音中将每个人的声音分离出来。

得到的似然函数如下:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

【m秒的记录,n个话筒】

这里就不多讲了,请见原链接,讲得比较清楚,建议自己推导一遍在本本上。

 

优化方法 

Newton method:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

 

Stochastic Gradient Ascent:

[Scikit-learn] 2.5 Dimensionality reduction - ICA

 

相关文章:

  • 2021-12-06
  • 2022-12-23
  • 2022-12-23
  • 2021-06-12
  • 2021-09-01
猜你喜欢
  • 2021-08-23
  • 2021-06-16
  • 2021-10-10
  • 2021-11-25
  • 2021-09-17
  • 2021-07-30
  • 2021-10-11
相关资源
相似解决方案