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I'm trying to convert a data.frame to a zoo object using read.zoo. It all seems to work fine except that the original index contains years only (no months or days) and yet when I read it in they appear.

Is there a way to create the new object with index as years only?

test.df3 <- data.frame (Country = rep (c (1, 5000), each = 10),
                        Year = factor(rep(1990:1999, 2)),
                        Values = sample(x =  1:20, size = 20, replace = TRUE),
                        Weights = sample (x = seq (0,50,10), size = 20,
                                          replace =TRUE)
                       )
stuff <- read.zoo (test.df3, format = "%Y", index.column = 2)

This is what I get:

> head(stuff)
           Country Values Weights
1990-01-10       1      2      50
1990-01-10    5000     19       0
1991-01-10       1     10      30
1991-01-10    5000      3      20

This is what I hope to get:

> head(stuff)
           Country Values Weights
1990             1      2      50
1990          5000     19       0
1991             1     10      30
1991          5000      3      20
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1 Answer 1

up vote 2 down vote accepted

Specifying format and no FUN or tz causes the heuristic to assume you want a "Date" class index. Specify FUN=identity to have no conversion and omit the format=. Also it seems that there are time series for two countries intermixed so we can split them, each into their own series, using split=.

read.zoo(test.df3, index = "Year", split = "Country", FUN = identity)

which gives:

     Values.1 Weights.1 Values.5000 Weights.5000
1990        6        50           2           30
1991       14        20           7           50
1992        7        40           6            0
1993       18        30          17           20
1994       10        50          13            0
1995        3         0          17           40
1996        4        20          16           40
1997       20        20          18           20
1998        9        20          16           30
1999       20         0          15           30
share|improve this answer
    
All correct! This is just a toy, and I will have to perform the same with much larger dataset, comprised of many countries. I then need to calculate some rolling means using rollapply, thus if there was a way to leave them all in two columns and then do the subsequent rolling means, that would be advantageous, but I'm not sure if it is posssible. –  user207146 Jan 10 '14 at 17:10
    
If you want to represent it in long form then its not a time series so zoo (which is a package for time series infrastructure) is not applicable. Use a data.frame or a data.table. –  G. Grothendieck Jan 10 '14 at 18:54

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