This loop keeps iterating. I am not sure about how to set `i`

and to collect/convert multiple scalars into a variable. I wonder whether the `permute`

command would work instead.

Context: Placebo test. N = 400; T = 16.

1000 times:

1) create a (randomly generated) pseudo variable (for each id, pseudo variable becomes 1 for one time period, otherwise 0)

2) run regression

3) report beta coefficient

Kernel density plot from 1000 beta coefficients

```
forvalues i = 1(1)1000 {
clear
use U:\Stata\nursing\data_placebo.dta // load data
sort provnum_id time //this is panel data
tsset provnum_id time
bysort provnum_id : gen rand_num = uniform() //1. psuedo var.
bysort provnum_id : egen ordering = rank(rand_num)
gen inspect = 1 if ordering == 16 // for each id: inspect=1 for one time
replace inspect = 0 if ordering !=16 // o/w 0
quietly xtreg composite_star inspect time_dummy2-time_dummy16, fe vce(cluster provnum_id) //run regression
scalar s_inspect `i' = _b[inspect] //3. record a beta coefficient
}
//create v_inspect from multiple s_inspect[i]
twoway kdensity v_inspect
```

The variable of `v_inspect`

(1*1000) incorporates 1000 values of `s_inspect`

.
An expected result is a graph similar to that for a normal distribution.