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My dataset looks like the following (let's call it "a"):

date value
2013-01-01 12.2
2013-01-02 NA
2013-01-03 NA
2013-01-04 16.8
2013-01-05 10.1
2013-01-06 NA
2013-01-07 12.0

I would like to replace the NA by the mean of the closest surroundings values (the previous and the next values in the series).

I tried the following but I am not convinced by the output...

miss.val=which(is.na(a$value))
library(zoo)
z=zoo(a$value,a$date)
z.corr=na.approx(z)
z.corr[(miss.val-1):(miss.val+1),]
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have you thought about Imputation? –  pepsimax Sep 4 '13 at 11:36
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1 Answer

up vote 2 down vote accepted

Using na.locf (Last Observation Carried Forward) from package zoo:

R> library("zoo")
R> x <- c(12.2, NA, NA, 16.8, 10.1, NA, 12.0)
R> (na.locf(x) + rev(na.locf(rev(x))))/2
[1] 12.20 14.50 14.50 16.80 10.10 11.05 12.00

(does not work if first or last element of x is NA)

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OK, but I want to change NA's by these values inside the "a" dataset. –  user2165907 Sep 4 '13 at 12:01
    
@user2165907 All you have to do is take his final line and redirect it back, i.e. x <- (na.locf(x) + rev(na.locf(rev(x))))/2 –  Carl Witthoft Sep 4 '13 at 12:06
    
a$value <- (na.locf(x) + rev(na.locf(rev(x))))/2 –  user2165907 Sep 4 '13 at 12:19
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