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I got a multiple regression model. And I want to add the fitted values and residuals to the original dataframe as a two new column, how can I achieve that? Thanks in advance. My model in R is like this:

BD_lm <- lm(y ~ x1+x2+x3+x4+x5+x6, data=BD)
summary(BD)

I also got the fitted value

BD_fit<-fitted(BD_lm)

But I want to add this "BD_fit" values as a column to my original data "BD". I don't know how. Because when I tried to call "BD_fit", it just gave me a lot of number. i am running a large dataset, so it is hard to list all of them here.

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Welcome to SO. Please read this and this. Please also show us what you have tried. Thanks. –  Henrik Sep 28 '13 at 9:19

3 Answers 3

up vote 3 down vote accepted

Suppose:

fm <- lm(demand ~ Time, BOD)

Then try this:

cbind(BOD, resid = resid(fm), fitted = fitted(fm))

or this:

BOD$resid <- resid(fm)
BOD$fitted <- fitted(fm)

ADDED:

If you have NA values in demand then use: na.exclude like this:

BOD$demand[3] <- NA # set up test data
fm <- lm(demand ~ Time, BOD, na.action = na.exclude)

Now the prevoius lines should work.

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I tried what you suggested, but i got an error:"Error in data.frame(..., check.names = FALSE) : arguments imply differing number of rows: 355027, 53467" The 355027 is the row number of my original data, and the 53467, i'm not sure what is it. maybe the problem is my fitted values is not the same number as the original data? i'm still trying to figure out. –  titi Sep 30 '13 at 21:57
    
Read this: stackoverflow.com/questions/5963269/… –  G. Grothendieck Sep 30 '13 at 22:59
    
@titi Do you have missing values in BD? You won't get a prediction for any records with missing values, which will make your vector of fitted values shorter than your original data frame. –  Matt Parker Sep 30 '13 at 23:28
    
Yes, i figured out that it's because of the missing values. Now i got it. Thanks. –  titi Oct 1 '13 at 19:28
    
Have added some info on NA handling. –  G. Grothendieck Oct 1 '13 at 23:48

Despite not knowing your case in detail, adding to a data frame is quite easy. You could jsut add a new column like so:

df <- data.frame(var1=1:10)
df$var2 <- 11:20

You only have to make sure that your additional data columns have the same length as the original ones. Otherwise, you won't be able to add them to your data frame.

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BD_fit<-data.frame(BD_fit)
BD$fit<-BD_fit[1]
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