# R Function error

I have a dataset with 17 variables, all of them integer/num. For a better descriptive analysis I created this user defined function :

`````` sum <- function(x)
{
na.len<-sum(is.na(x))
mean<-mean(x,na.rm=T)
sd<-sd(x,na.rm=T)
min<-min(x,na.rm=T)
q1<-quantile(x,0.25,na.rm=T)
q3<-quantile(x,0.75,na.rm=T)
max<-max(x,na.rm=T)
UC1=mean+3*sd
LC1=mean-3*sd
UC2=quantile(x,0.99,na.rm=T)
LC2=quantile(x,0.01,na.rm=T)
iqr=IQR(x,na.rm=T)
UC3=q3+1.5*iqr
LC3=q1-1.5*iqr
ot<-max>UC1 | min<LC1 | max>UC2 | min<LC2 | max>UC3 | min<LC3
x[x>max]<-max
x[x<min]<-min
out_exist <- ifelse(noofNA > 0, "outlier_exists", "")
return(c(noofNA=na.len,mean=mean,std=sd,min=min,q1=q1,q3=q3,max=max,outlier=ot, out_exists= out_exist))
}
``````

When I use this function on my dataset using :

``````apply(df, 2, sum)
``````

I get following error :

Error: evaluation nested too deeply: infinite recursion / options(expressions=)? Error during wrapup: evaluation nested too deeply: infinite recursion / options(expressions=)?

• If you are asking why this code doesn't work, it should be included with a minimum reproducible example. I would also recommend to split the function into small parts and find where it is not working. – akrun Oct 23 '15 at 9:57
• You named your function `sum`, then inside it, you call the function `sum` to perform summation. Change the name of your function. – user3710546 Oct 23 '15 at 9:58
• Also, don't do like this `mean<-mean(x,na.rm=T)`, instead of naming result `mean` try using something like this: `meanResult <- mean(x, na.rm = TRUE)` – PoGibas Oct 23 '15 at 10:06
• Proof: `sum <- function(x){ sum(x) }; sum(1)`. `Error: evaluation nested too deeply: infinite recursion / options(expressions=)?` – user3710546 Oct 23 '15 at 10:11
• I updated the function : – Ranjan Pandey Oct 23 '15 at 10:13

This is how your function should look like. But you didn't define `noofNA`, so you will still get an error.

``````details <- function(x)
{
na.len <- sum(is.na(x))
m <- mean(x, na.rm=TRUE)
s <- sd(x, na.rm=TRUE)
mn <- min(x, na.rm=TRUE)
q1 <- quantile(x, 0.25, na.rm=TRUE)
q3 <- quantile(x, 0.75, na.rm=TRUE)
mx <- max(x, na.rm=TRUE)
UC1 <- m+3*s
LC1 <- m-3*s
UC2 <- quantile(x, 0.99, na.rm=TRUE)
LC2 <- quantile(x, 0.01, na.rm=TRUE)
iqr <- IQR(x, na.rm=TRUE)
UC3 <- q3+1.5*iqr
LC3 <- q1-1.5*iqr
ot <- mx>UC1 | mn<LC1 | mx>UC2 | mn<LC2 | mx>UC3 | mn<LC3
x[x>mx]<-mx
x[x<mn]<-mn
out_exist <- ifelse(noofNA > 0, "outlier_exists", "")
return(list(noofNA=na.len, mean=m, std=s, min=mn, q1=q1, q3=q3, max=mx, outlier=ot, out_exists= out_exist))
}

set.seed(123)
df1 <- data.frame(x = rnorm(100), y = rnorm(100))
sapply(df1, details)
``````