I have a sorted list with 3 columns, and I'm searching to see if the second column matches 2 or 4, then returning the first column's element if so, and putting that into a function.

```
noOutliers((L1LeanList[order(L1LeanList[,1]),])[(L1LeanList[order(L1LeanList[,1]),2]==2)|
(L1LeanList[order(L1LeanList[,1]),2]==4),1])
```

when nothing matches the condition. I get a

```
Error in ((L1LeanList[order(L1LeanList[, 1]), ])[1, ])[(L1LeanList[order(L1LeanList[, :
incorrect number of dimensions
```

due to the fact that we effectively have List[List[all false]]

I can't just sub out something like L1LLSorted<-(L1LeanList[order(L1LeanList[,1]),] and use L1LLSorted[,2] since this returns an error when the list is of length exactly 1

so now my code would need to look like

```
noOutliers(ifelse(any((L1LeanList[order(L1LeanList[,1]),2]==2)|
(L1LeanList[order(L1LeanList[,1]),2]==4)),0,
(L1LeanList[order(L1LeanList[,1]),])[(L1LeanList[order(L1LeanList[,1]),2]==2)|
(L1LeanList[order(L1LeanList[,1]),2]==4),1])))
```

which seems a bit ridiculous for the simple thing I'm requesting. while writing this I realized that I can end up putting all this error checking into the noOutliers function itself so it looks like noOutliers(L1LeanList,2,2,4) which will look much better, a necessity since slightly varying versions of this appear in my code dozens of times. I can't help but wonder, still, if theres a more elegant way to write the actual function.

for the curious, noOutliers finds a mean of the 30th-70th percentile in the sorted data set like so

```
noOutliers<-function(oList)
{
if (length(oList)<=20) return ("insufficient data")
cumSum<-0
iterCount<-0
for(i in round(length(oList)*3/10-.000001):round(length(oList)*7/10+.000001)+1)#adjustments deal with .5->even number rounding r mishandling
{ #and 1-based indexing (ex. for a list 1-10, taking 3-7 cuts off 1,2,8,9,10, imbalanced.)
cumSum<-cumSum+oList[i]
iterCount<-iterCount+1
}
return(cumSum/iterCount)
```

}