2

This question already has an answer here:

I am looking for a method to bind lm residuals to an input dataset. The method must add NA for missing residuals and the residuals should correspond to the proper row.

Sample data:

N <- 100 
Nrep <- 5 
X <- runif(N, 0, 10) 
Y <- 6 + 2*X + rnorm(N, 0, 1) 
X[ sample(which(Y < 15), Nrep) ] <- NA
df <- data.frame(X,Y)

residuals(lm(Y ~ X,data=df,na.action=na.omit))

Residuals should be bound to df.

marked as duplicate by Henrik r May 1 '18 at 6:17

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • Similar questions here and here. – TMS Jul 31 '13 at 18:26
0
"[<-"(df, !is.na(df$X), "res", residuals(lm(Y ~ X,data=df,na.action=na.omit)))

will do the trick.

  • Can you explain this? What is "[<-"? – Brandon Bertelsen Dec 2 '12 at 20:08
  • @BrandonBertelsen The function "[<-"(x1, x2, x3, x4) is similar to x1[x2, x3] <- x4 but leaves x1 unchanged and returns a new object. – Sven Hohenstein Dec 3 '12 at 7:02
7

Simply change the na.action to na.exclude:

residuals(lm(Y ~ X, data = df, na.action = na.exclude))

na.omit and na.exclude both do casewise deletion with respect to both predictors and criterions. They only differ in that extractor functions like residuals() or fitted() will pad their output with NAs for the omitted cases with na.exclude, thus having an output of the same length as the input variables.

(this is the best solution found here)

  • This is the general solution you're looking for, the one that works with missings in any number of predictors or DV, with lm and lme4. – Ruben Dec 8 '14 at 11:40
1

Using merge, or join.

N <- 100 
Nrep <- 5 
X <- runif(N, 0, 10) 
Y <- 6 + 2*X + rnorm(N, 0, 1) 
X[ sample(which(Y < 15), Nrep) ] <- NA
df <- data.frame(X,Y)

df$id <- rownames(df)

res <- residuals(lm(Y ~ X,data=df,na.action=na.omit))
tmp <- data.frame(res=res)
tmp$id <- names(res)

merge(df,tmp,by="id",sort=FALSE,all.x=TRUE)

If you need to maintain the order. Use join() from the plyr package:

library(plyr) 
join(df,tmp)
  • couldn't this code be simplified by merging by row names? – TMS Jul 31 '13 at 18:08
  • There is much much simpler solution, see my answer – TMS Jul 31 '13 at 18:24
0

This maybe could be solution, but, first, you do not need c() in data.frame

df <- data.frame(X,Y)
df$Res[!is.na(X)]<-residuals(lm(Y ~ X,data=df,na.action=na.omit))
  • This duplicates residuals. Rather than appending NA – Brandon Bertelsen Dec 2 '12 at 19:17
  • I've removed the c() in data.frame – metasequoia Dec 2 '12 at 19:17
  • What if Y is NA? What if another predictor variables is NA? Not very robust to this, thus probably not a way to go. – TMS Jul 31 '13 at 18:09
0
N <- 100 
Nrep <- 5 
X <- runif(N, 0, 10) 
Y <- 6 + 2*X + rnorm(N, 0, 1) 
X[ sample(which(Y < 15), Nrep) ] <- NA
df <- data.frame(X,Y)

R.all=as.numeric(rep(NA,length(X)))  # numeric vector with missing values
res=residuals(lm(Y ~ X,data=df,na.action=na.omit))  
i=as.numeric(names(res)) # vector locations of non-missing residuals
R.all[i]=res;R.all     # assign residuals to their correct positions.

Not the answer you're looking for? Browse other questions tagged or ask your own question.