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I'm new in R. My question is how to impute missing value using mean of before and after of the missing data point?

example;

using the mean from the upper and lower of each NA as the impute value.

-mean for row number 3 is 38.5

-mean for row number 7 is 32.5

age
52.0
27.0
NA
23.0
39.0
32.0
NA
33.0
43.0

Thank you.

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1  
I'm assuming you have made a mistake when you say that the mean of 27 and 23 is 38.5. – Ananda Mahto Mar 9 '13 at 7:12
    
Yes,the correct mean is 25.0. – NoraNorad Mar 13 '13 at 6:57

Here a solution using from na.locf from zoo package which replaces each NA with the most recent non-NA prior or posterior to it.

0.5*(na.locf(x,fromlast=TRUE) + na.locf(x))
[1] 52.0 27.0 25.0 23.0 39.0 32.0 32.5 33.0 43.0

the advantage here if you have more than one consecutive NA.

x <- c(52, 27, NA, 23, 39, NA, NA, 33, 43)
0.5*(na.locf(x,fromlast=TRUE) + na.locf(x))
[1] 52 27 25 23 39 36 36 33 43

EDIT rev argument is deprecated so I replace it by fromlast

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Thank you very much.. – NoraNorad Mar 13 '13 at 7:04
    
Thank you for your help, i tried using the method above but i did't get the same answer like you did.the imputed value i get is the value before the NA, not the mean before and after the NA's.how do i fix this?.thanks again. – NoraNorad Mar 26 '13 at 3:53

This would be a basic manual approach you can take:

age <- c(52, 27, NA, 23, 39, 32, NA, 33, 43)
age[is.na(age)] <- rowMeans(cbind(age[which(is.na(age))-1], 
                                  age[which(is.na(age))+1]))
age
# [1] 52.0 27.0 25.0 23.0 39.0 32.0 32.5 33.0 43.0

Or, since you seem to have a single column data.frame:

mydf <- data.frame(age = c(52, 27, NA, 23, 39, 32, NA, 33, 43))

mydf[is.na(mydf$age), ] <- rowMeans(
  cbind(mydf$age[which(is.na(mydf$age))-1],
        mydf$age[which(is.na(mydf$age))+1]))
share|improve this answer

Just an other way:

age <- c(52, 27, NA, 23, 39, 32, NA, 33, 43)
age[is.na(age)] <- apply(sapply(which(is.na(age)), "+", c(-1, 1)), 2, 
                         function(x) mean(age[x]))
age
## [1] 52.0 27.0 25.0 23.0 39.0 32.0 32.5 33.0 43.0
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