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I am trying to use plyr and approx to interpolate values for y for each year between the observed values.

Instead of just the 3 observations for each country,

I would like to have 11 observations - one for each year from 1985 and 1995.

Here is a sample data set

country <- c("country a", "country a", "country a",
   "country b", "country b", "country b",
   "country c", "country c", "country c")
year <- c(1985, 1990, 1995,
      1985, 1990, 1995,
      1985, 1990, 1995)
y <- c(10, 12, 16,
   NA, 23, 20,
   12, 16, NA)

data <- data.frame(cbind(country,year,y))

The data set looks like this:
  country   year    y
1 country a 1985   10
2 country a 1990   12
3 country a 1995   16
4 country b 1985 <NA>
5 country b 1990   23
6 country b 1995   20
7 country c 1985   12
8 country c 1990   16
9 country c 1995 <NA>

I can get approx to work for a subset of the data with just one country

a <- subset(data, data$country == "country a")

interpolate y value for every year from 1985 to 1995

attach(a)
a.int <- approx(year,y, xout = 1985:1995, method = "linear")

But how do I use plyr to interpolate data for each country?

I've tried using dlply, but the output values are NA for each year

attach(data)
int <- dlply(data, .(country), function(i) approx(i$year, i$y, xout = 1985:1995, 
method = "linear")$y )

How can I use plyr and approx together to interpolate values of y?

Also, once I get the correct aprrox output (which will be list) how do I reshape the data so that it is in the original long format? Ideally, the data would have 11 rows each country and one column with y values.

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How many questions is this? You might take a step back and try to resolve one issue at a time. –  bernie Mar 23 '12 at 16:31
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1 Answer

up vote 3 down vote accepted

I would use ddply rather than dlply for this.

country <- c("country a", "country a", "country a",
   "country b", "country b", "country b",
   "country c", "country c", "country c")
year <- c(1985, 1990, 1995,
      1985, 1990, 1995,
      1985, 1990, 1995)
y <- c(10, 12, 16,
   NA, 23, 20,
   12, 16, NA)

data <- data.frame(cbind(country,year,y)) 

my.func<- function(i) {
  estimate <- approx(i$year,
                     i$y,
                     xout = 1985:1995,
                     method = "linear")
  return(data.frame(year=estimate$x, y=estimate$y, country=unique(i$country)))
}

> ddply(data, .(country),  my.func)
   year    y   country
1  1985 10.0 country a
2  1986 10.4 country a
3  1987 10.8 country a
4  1988 11.2 country a
5  1989 11.6 country a
6  1990 12.0 country a
7  1991 12.8 country a
8  1992 13.6 country a
9  1993 14.4 country a
10 1994 15.2 country a
11 1995 16.0 country a
12 1985   NA country b
13 1986   NA country b
14 1987   NA country b
15 1988   NA country b
16 1989   NA country b
17 1990 23.0 country b
18 1991 22.4 country b
19 1992 21.8 country b
20 1993 21.2 country b
21 1994 20.6 country b
22 1995 20.0 country b
23 1985 12.0 country c
24 1986 12.8 country c
25 1987 13.6 country c
26 1988 14.4 country c
27 1989 15.2 country c
28 1990 16.0 country c
29 1991   NA country c
30 1992   NA country c
31 1993   NA country c
32 1994   NA country c
33 1995   NA country c

sessionInfo()
R version 2.14.2 (2012-02-29)
Platform: x86_64-pc-linux-gnu (64-bit)

locale:
 [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C               LC_TIME=en_US.UTF-8        LC_COLLATE=en_US.UTF-8    
 [5] LC_MONETARY=en_US.UTF-8    LC_MESSAGES=en_US.UTF-8    LC_PAPER=C                 LC_NAME=C                 
 [9] LC_ADDRESS=C               LC_TELEPHONE=C             LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C       

attached base packages:
[1] stats     graphics  grDevices utils     datasets  grid      methods   base     

other attached packages:
[1] ggplot2_0.8.9  proto_0.3-9.2  reshape_0.8.4  reshape2_1.2.1 plyr_1.7.1    

loaded via a namespace (and not attached):
[1] stringr_0.6

However, approx by default returns NA for values outside the min or max X supplied. see ?approx for the different methods for changing this.

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Thanks, Justin. When I set rule = 1 in approx, I still get NAs for each y value. But all interpolated values should be within the min and max values supplied (1985:1995). –  user1288578 Mar 23 '12 at 17:10
1  
For example, in your data set, there is no value for 1985 for country B. So it cannot interpolate values less than 1990 (that would be extrapolation!). rule=1 is the default behavior, so yes it returns NA. You can look at approxExtrap in the Hmisc package for linear extrapolation. –  Justin Mar 23 '12 at 17:25
    
Even when I edit the data set so that there are no NAs, the ddply output for interpolated y values are still all NA. For data sets that do have NAs, is there a way to interpolate as much data as possible on a country by country basis? In my example, this would interpolate 11 values for country A, and only 6 values for country B and country C. –  user1288578 Mar 23 '12 at 17:46
    
not sure what to tell you... If I copy the data.frame you supplied and run the code I wrote, I don't get NAs for any value where interpolation could happen. See my edit. –  Justin Mar 23 '12 at 18:07
    
Justin, thanks for all your help. For some reason I am still getting NAs for all y values, despite copying your code. Would you mind making one last post where you combine my data frame code with your plyr code, just to help see where I am making a mistake. Thanks! –  user1288578 Mar 23 '12 at 18:25
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