机器学习---吴恩达---Week8_2(非监督学习_PCA)

Dimensionality Reduction(维度降低)

Data Compression(数据压缩):e.g.Reduce data from 3D to 2D;Reduce data from 2D to 1D

Data Visualization(数据可视化):一般将数据维度降低到2D或3D

Principal Component Analysis(主成分分析)

Principal Component Analysis problem formulation(主成分分析问题方程)

PCA algorithm

 

然后求解协方差矩阵,进一步获得Ureduce矩阵

 

 

Reconstruction from compressed representation(压缩数据还原重建)

Choosing the number of principal components(选择主成分数量K)

选择方法:

1.K值从1开始增加,循环计算PCA算法,直至满足要求(太过麻烦,可行性低)

2.使用协方差矩阵计算结果中的S矩阵

Advice for applying PCA(应用PCA的建议)

 

Bad use of PCA: To prevent overfitting(PCA不适用于减少过度拟合)

posted @ 2019-04-11 17:47  凌·杰特  阅读(247)  评论(0编辑  收藏  举报