Your approach is correct. However, the standard way of selecting values at random is just to simulate from a uniform(0,1) and accept/reject as appropriate. Your pseudo-code is then:

```
if(unif(0,1) < 0.2)
##Do something
```

After you select `n`

items from a total of `N`

entries, you have been sampling from the Binomial distribution with parameters `N`

and `p=0.2`

. For example, if `N=10000`

, then you would have selected (on average) `N*p=10000*0.2=2000`

items. However, the variance will be: `N*p*(1-p) = 1600`

. So selecting anywhere between

```
(2000 - 2*sqrt(1600), 2000 + 2*sqrt(1600)) = (1920, 2080)
```

would be reasonable.