Hopefully simple coding question: How do I include statistical test in a function. Specifically, I'm working with time-series, and I want to flag curves that are not stationary. I need something like this in R:

```
flag<- list()
for (i in 1:length(obsv)) {
if adf.test(i) FAIL {
append(flag, i)
}}
```

Edit with reproducible example:

```
>df
DATE ID VALUE
2012-03-06 1 5.67
2012-03-07 1 3.45
2012-03-08 1 4.56
2012-03-09 1 20.30
2012-03-10 1 5.10
2012-03-06 2 5.67
2012-03-07 2 3.45
2012-03-08 2 4.56
2012-03-09 2 5.28
2012-03-10 2 5.10
2012-03-06 3 5.67
2012-03-07 3 7.80
2012-03-08 3 8.79
2012-03-09 3 9.43
2012-03-10 3 10.99
```

You can see, object 2 is stationary, but 3 exhibits a trend and 1 has a pulse at 3/09. I thus want to flag 1 and 3.

```
>library(tseries)
>adf.test(df[which(df$ID==1), 3])
Augmented Dickey-Fuller Test
data: data
Dickey-Fuller = 11.1451, Lag order = 16, p-value = 0.01
null hypothesis: non-stationary
>adf.test(df[which(df$ID==2), 3])
Augmented Dickey-Fuller Test
data: data
Dickey-Fuller = 11.1451, Lag order = 16, p-value = 0.99
alternative hypothesis: stationary
>adf.test(df[which(df$ID==3), 3])
Augmented Dickey-Fuller Test
data: data
Dickey-Fuller = 11.1451, Lag order = 16, p-value = 0.04
null hypothesis: non-stationary
```

What I want is to incorporate the results of the test in a function.