seb*_*n-c 10
Bill Venables 在R邮件列表的答案中提供了这个解决方案,我对其进行了一些细微的修改:
cor.prob <- function(X, dfr = nrow(X) - 2) {
R <- cor(X)
above <- row(R) < col(R)
r2 <- R[above]^2
Fstat <- r2 * dfr / (1 - r2)
R[above] <- 1 - pf(Fstat, 1, dfr)
cor.mat <- t(R)
cor.mat[upper.tri(cor.mat)] <- NA
cor.mat
}
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所以让我们测试一下:
set.seed(123)
data <- matrix(rnorm(100), 20, 5)
cor.prob(data)
[,1] [,2] [,3] [,4] [,5]
[1,] 1.0000000 NA NA NA NA
[2,] 0.7005361 1.0000000 NA NA NA
[3,] 0.5990483 0.6816955 1.0000000 NA NA
[4,] 0.6098357 0.3287116 0.5325167 1.0000000 NA
[5,] 0.3364028 0.1121927 0.1329906 0.5962835 1
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这与cor.test排队吗?
cor.test(data[,2], data[,3])
Pearson's product-moment correlation
data: data[, 2] and data[, 3]
t = 0.4169, df = 18, p-value = 0.6817
alternative hypothesis: true correlation is not equal to 0
95 percent confidence interval:
-0.3603246 0.5178982
sample estimates:
cor
0.09778865
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似乎工作正常.
这是我刚刚制作的东西,我偶然发现了这篇文章,因为我正在寻找一种方法来获取每对变量,并获得一个整洁的 nX3 数据框。第 1 列是变量,第 2 列是变量,第 3 列和第 4 列是它们的绝对值和真实相关性。只需向函数传递一个包含数字和整数值的数据帧即可。
pairwiseCor <- function(dataframe){
pairs <- combn(names(dataframe), 2, simplify=FALSE)
df <- data.frame(Vairable1=rep(0,length(pairs)), Variable2=rep(0,length(pairs)),
AbsCor=rep(0,length(pairs)), Cor=rep(0,length(pairs)))
for(i in 1:length(pairs)){
df[i,1] <- pairs[[i]][1]
df[i,2] <- pairs[[i]][2]
df[i,3] <- round(abs(cor(dataframe[,pairs[[i]][1]], dataframe[,pairs[[i]][2]])),4)
df[i,4] <- round(cor(dataframe[,pairs[[i]][1]], dataframe[,pairs[[i]][2]]),4)
}
pairwiseCorDF <- df
pairwiseCorDF <- pairwiseCorDF[order(pairwiseCorDF$AbsCor, decreasing=TRUE),]
row.names(pairwiseCorDF) <- 1:length(pairs)
pairwiseCorDF <<- pairwiseCorDF
pairwiseCorDF
}
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输出如下:
> head(pairwiseCorDF)
Vairable1 Variable2 AbsCor Cor
1 roll_belt accel_belt_z 0.9920 -0.9920
2 gyros_dumbbell_x gyros_dumbbell_z 0.9839 -0.9839
3 roll_belt total_accel_belt 0.9811 0.9811
4 total_accel_belt accel_belt_z 0.9752 -0.9752
5 pitch_belt accel_belt_x 0.9658 -0.9658
6 gyros_dumbbell_z gyros_forearm_z 0.9491 0.9491
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