I apologize for the lack of a reproducible example. I can't seem to reproduce the error with smaller examples.

I'm following an example I found on R-forge using the `subset`

argument of `dredge`

from the `MuMIn`

to only consider models where explanatory variables have a low correlation with each other. It works fine in the example in the link, and it worked fine for a few datasets I worked with. However, one particular dataset seems not to work properly.

When I input `smat`

(see below) as the argument to `subset`

in `dredge`

with this particular dataset, I get a warning and the output includes models with variables that shouldn't have been allowed in the same model:

```
smat <- abs(cor(df[variables])) <= .3
smat[!lower.tri(smat)] <- NA
dredge(global.mod, subset= smat, m.max=3, fixed=~(1|Location))
Warning message:
In dredge(global.mod, subset = smat, m.max = 3, fixed = ~(1 | :
non-missing values exist outside the lower triangle of 'subset'
```

The lower triangle of `smat`

is comprised of TRUE and FALSE entries, and everything else (i.e. upper triangle and diagonal) is NA, and this exact approach worked for me previously. So, I don't understand what could be going wrong here. Does anyone have any thoughts why I might have this problem with non-missing values?

Here is my subset matrix `smat`

:

```
w5 w10 w30 w45 w60 w120 dw5 dw10 dw30 dw45 dw60 dw120 ar n_ar mxar mxn_ar
w5 NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
w10 FALSE NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA
w30 FALSE FALSE NA NA NA NA NA NA NA NA NA NA NA NA NA NA
w45 FALSE FALSE FALSE NA NA NA NA NA NA NA NA NA NA NA NA NA
w60 FALSE FALSE FALSE FALSE NA NA NA NA NA NA NA NA NA NA NA NA
w120 FALSE FALSE FALSE FALSE FALSE NA NA NA NA NA NA NA NA NA NA NA
dw5 FALSE TRUE TRUE TRUE TRUE TRUE NA NA NA NA NA NA NA NA NA NA
dw10 TRUE TRUE TRUE TRUE TRUE TRUE FALSE NA NA NA NA NA NA NA NA NA
dw30 TRUE TRUE TRUE TRUE TRUE TRUE FALSE FALSE NA NA NA NA NA NA NA NA
dw45 TRUE TRUE FALSE TRUE TRUE TRUE FALSE FALSE FALSE NA NA NA NA NA NA NA
dw60 FALSE TRUE FALSE FALSE FALSE TRUE FALSE FALSE FALSE FALSE NA NA NA NA NA NA
dw120 FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE NA NA NA NA NA
ar FALSE FALSE FALSE FALSE FALSE FALSE TRUE TRUE TRUE TRUE TRUE TRUE NA NA NA NA
n_ar FALSE FALSE FALSE FALSE FALSE FALSE TRUE TRUE TRUE TRUE TRUE FALSE FALSE NA NA NA
mxar TRUE TRUE FALSE FALSE FALSE TRUE TRUE TRUE FALSE FALSE FALSE FALSE FALSE TRUE NA NA
mxn_ar FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE NA
```

P.s. - I know in the link above, there is an alternate approach using an expression instead of a matrix. It works just fine, and the expression is actually generated using `smat`

. However, I'd like to understand the non-missing values problem as it doesn't make sense to me and may represent a gap in my R / programming knowledge.

`sum(!is.na(smat[!lower.tri(smat)]))`

returns`0`

? – flodel Mar 15 at 20:50`subset`

is reordered using the variables in`getAllTerms(global.mod)`

. Can you check that your variables in`smat`

are indeed in the same order as`getAllTerms(global.mod)`

? It might be a little more complicated than what I say so if it does not help, I'd recommend you debug using`recover`

. – flodel Mar 15 at 22:41