Spark 2.0 PCA主成份分析

时间:2023-03-09 04:56:16
Spark 2.0 PCA主成份分析

PCA在Spark2.0中用法比较简单,只需要设置:

.setInputCol(“features”)//保证输入是特征值向量
.setOutputCol(“pcaFeatures”)//输出
.setK()//主成分个数

注意:PCA前一定要对特征向量进行规范化(标准化)!!!

//Spark 2.0 PCA主成分分析
//注意:PCA降维前必须对原始数据(特征向量)进行标准化处理
package my.spark.ml.practice; import org.apache.spark.ml.feature.PCA;
import org.apache.spark.ml.feature.PCAModel;//不是mllib
import org.apache.spark.ml.feature.StandardScaler;
import org.apache.spark.sql.Dataset;
import org.apache.spark.sql.Row;
import org.apache.spark.sql.SparkSession; public class myPCA { public static void main(String[] args) {
SparkSession spark=SparkSession
.builder()
.appName("myLR")
.master("local[4]")
.getOrCreate();
Dataset<Row> rawDataFrame=spark.read().format("libsvm")
.load("/home/hadoop/spark/spark-2.0.0-bin-hadoop2.6" +
"/data/mllib/sample_libsvm_data.txt");
//首先对特征向量进行标准化
Dataset<Row> scaledDataFrame=new StandardScaler()
.setInputCol("features")
.setOutputCol("scaledFeatures")
.setWithMean(false)//对于稀疏数据(如本次使用的数据),不要使用平均值
.setWithStd(true)
.fit(rawDataFrame)
.transform(rawDataFrame);
//PCA Model
PCAModel pcaModel=new PCA()
.setInputCol("scaledFeatures")
.setOutputCol("pcaFeatures")
.setK()//
.fit(scaledDataFrame);
//进行PCA降维
pcaModel.transform(scaledDataFrame).select("label","pcaFeatures").show(,false);
}
} /**
* 没有标准化特征向量,直接进行PCA主成分:各主成分之间值变化太大,有数量级的差别。
+-----+------------------------------------------------------------+
|label|pcaFeatures |
+-----+------------------------------------------------------------+
|0.0 |[-1730.496937303442,6.811910953794295,2.8044962135250024] |
|1.0 |[290.7950975587044,21.14756134360174,0.7002807351637692] |
|1.0 |[149.4029441007031,-13.733854376555671,9.844080682283838] |
|1.0 |[200.47507801105797,18.739201694569232,22.061802015132024] |
|1.0 |[236.57576401934855,36.32142445435475,56.49778957910826] |
|0.0 |[-1720.2537550195714,25.318146742090196,2.8289957152580136] |
|1.0 |[285.94940382351075,-6.729431266185428,-33.69780131162192] |
|1.0 |[-323.70613777909136,2.72250162998038,-0.528081577573507] |
|0.0 |[-1150.8358810584655,5.438673892459839,3.3725913786301804] |
*/
/**
* 标准化特征向量后PCA主成分,各主成分之间值基本上在同一水平上,结果更合理
|label|pcaFeatures |
+-----+-------------------------------------------------------------+
|0.0 |[-14.998868464839624,-10.137788261664621,-3.042873539670117] |
|1.0 |[2.1965800525589754,-4.139257418439533,-11.386135042845101] |
|1.0 |[1.0254645688925883,-0.8905813756164163,7.168759904518129] |
|1.0 |[1.5069317554093433,-0.7289177578028571,5.23152743564543] |
|1.0 |[1.6938250375084654,-0.4350617717494331,4.770263568537382] |
|0.0 |[-15.870371979062549,-9.999445137658528,-6.521920373215663] |
|1.0 |[3.023279951602481,-4.102323190311296,-9.451729897327345] |
|1.0 |[3.500670997961283,-4.1791886802435805,-9.306353932746568] |
|0.0 |[-15.323114679599747,-16.83241059234951,2.0282183995400374] |
*/

如何选择k值?

//PCA Model
PCAModel pcaModel=new PCA()
.setInputCol("scaledFeatures")
.setOutputCol("pcaFeatures")
.setK()//
.fit(scaledDataFrame);
int i=;
for(double x:pcaModel.explainedVariance().toArray()){
System.out.println(i+"\t"+x+" ");
i++;
}
输出100个降序的explainedVariance(和scikit-learn中PCA一样):
0.25934799275530857
0.12355355301486977
0.07447670060988294
0.0554545717486928
0.04207050513264405
0.03715986573644129
0.031350566055423544
0.027797304129489515
0.023825873477496748
0.02268054946233242
0.021320060154167115
0.019764029918116235
0.016789082901450734
0.015502412597350008
0.01378190652256973
0.013539546429755526
0.013283518226716669
0.01110412833334044
...

大约选择20个主成分就足够了 
随便做一个图可以选择了(详细可参考Scikit-learn例子) 
http://scikit-learn.org/stable/auto_examples/plot_digits_pipe.html

Spark 2.0 PCA主成份分析