# mean(rnorm(100,mean=0,sd=1)) is not 0; and sd(rnorm(100,mean=0,sd=1)) is not 1. Why?

(Reproducible example added.) I am little bit confused about rnorm function. I expected `mean(rnorm(100,mean=0,sd=1))` to be 0; and `sd(rnorm(100,mean=0,sd=1))` to be 1. But gave different results. Where am I wrong?

Reproducible Example:

``````mean(rnorm(100,mean=0,sd=1))
# [1] 0.07872548
sd(rnorm(100,mean=0,sd=1))
# [1] 1.079348
``````

Any help is greatly appreciated.

• Your sample size is to small, the larger the sample size, the closer the mean will get to 0 and the sd will get to 1. – John Paul Jan 5 '15 at 21:16
• `rnorm` gives you random variables which have a normal distribution with a 0 mean and 1 SD. "Random" means these values have been taken from distribution randomly, thus it is possible that a bigger proportion was taken from the right side opposed to the left side (for example). Still, your `mean` and a `sd` are very close. The bigger your data set will be, the closer they'll get by the LLN theory. – David Arenburg Jan 5 '15 at 21:19
• @JohnPaul, You should be right. But, interestingly, AFAIS, in "?rnorm" help documentation, there appears nothing as to the validity of this rnorm mean and sd only in the asympthotic case! – Erdogan CEVHER Jan 5 '15 at 21:20
• Also, try running `plot(sapply(1L:1e4, function(x) mean(rnorm(x))))` or `plot(sapply(1L:1e4, function(x) sd(rnorm(x))))` – David Arenburg Jan 5 '15 at 21:28
• very closely related: stackoverflow.com/questions/18919091/… – Ben Bolker Jan 5 '15 at 22:08

`rnorm(100)` gives you a random sample of 100 values from distribution mean = 0 and sd = 1. Because it is random, the actual value of `mean(rnorm(100))` depends on which particular values you get back. There is no guarantee that the mean will be 0, but statistically it should converge to 0 as you use larger sample sizes. For example, try `mean(rnorm(10000))`; it will probably be closer to 0 than before.

Edit: If you want to force the sample to have a particular mean and standard deviation, check out this question: "Generate random numbers with fixed mean and sd".

• I thought rnorm(100,mean=0,sd=1) as "100 values whose mean is 0 and sd is 1", not as "100 values from a distribution with mean=0 and sd=1". Your explanation is very clear. I got it. Thanks a lot. – Erdogan CEVHER Jan 5 '15 at 21:27

This is due to noise. I would suggest to try with larger sets to approach the target, or change the seed to see various results.

`rnorm` creates random deviates.

``````set.seed(4)
x <- rnorm(5, mean=0, sd=1)
x
# [1]  0.2167549 -0.5424926  0.8911446  0.5959806  1.6356180
mean(c(0.2167549, -0.5424926, 0.8911446, 0.5959806, 1.6356180))
# [1] 0.5594011
``````
• I get the mean of this as 0.5594011. – John Paul Jan 5 '15 at 21:23
• Thanks @JohnPaul forgot the `c` in `mean` – JasonAizkalns Jan 5 '15 at 21:26