如何在R中从相关性检验中提取相关系数的值?
要在R中执行相关性检验,我们需要使用cor.test函数以及两个变量,它会返回许多值,例如检验统计量值、自由度、p值、置信区间和相关系数的值。如果我们想从相关性检验输出中提取相关系数的值,则可以使用estimate函数,如下面的示例所示。
示例
x1<-rnorm(20,5,2) y1<-rnorm(20,5,1) cor.test(x1,y1)
输出
Pearson's product-moment correlation data: x1 and y1 t = -0.13423, df = 18, p-value = 0.8947 alternative hypothesis: true correlation is not equal to 0 95 percent confidence interval: -0.4675990 0.4167308 sample estimates: cor -0.03162132
cor.test(x1,y1)$estimate cor -0.08194057
示例
x2<-runif(5000,2,5) y2<-runif(5000,2,10) cor.test(x2,y2)
输出
Pearson's product-moment correlation data: x2 and y2 t = -1.4823, df = 4998, p-value = 0.1383 alternative hypothesis: true correlation is not equal to 0 95 percent confidence interval: -0.048653479 0.006760764 sample estimates: cor -0.02096246
cor.test(x2,y2)$estimate cor 0.01301688
示例
x3<-runif(50,2,5) y3<-runif(50,2,10) cor.test(x3,y3)
输出
Pearson's product-moment correlation data: x3 and y3 t = -0.80709, df = 48, p-value = 0.4236 alternative hypothesis: true correlation is not equal to 0 95 percent confidence interval: -0.3817626 0.1680496 sample estimates: cor -0.1157106
cor.test(x3,y3)$estimate cor 0.1031475
示例
x4<-rexp(500,2.1) y4<-rexp(500,5.75) cor.test(y4,y4)
输出
Pearson's product-moment correlation data: y4 and y4 t = Inf, df = 498, p-value < 2.2e-16 alternative hypothesis: true correlation is not equal to 0 95 percent confidence interval: 1 1 sample estimates: cor 1
cor.test(y4,y4)$estimate cor 1
示例
x5<-rpois(100000,2) y5<-rpois(100000,5) cor.test(y5,y5)
输出
Pearson's product-moment correlation data: y5 and y5 t = 1.5006e+10, df = 99998, p-value < 2.2e-16 alternative hypothesis: true correlation is not equal to 0 95 percent confidence interval: 1 1 sample estimates: cor 1
cor.test(y5,y5)$estimate cor 1
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