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I searched for quite a while and unfortunately couldn't find any previous posts that attempt to do what I need to do. I have a data table with 46 rows that is indexed by date (lets call this Data1. Data1 covers sporadic values over three years' time (2001-2003). I also have a vector of dates 362 values long which covers the same date range (we'll call this Data2).

I need to assign values to the dates in Data2 based on the values in Data1. More specifically, the dates in Data2 that are a week before a given date in Data1 should be set to the value for that date in Data1. Here's an example using the first value in Data1 and dates in Data2:


DATE         VALUE
2001-01-24     17
2001-02-17     21
2001-03-20     18


DATE         VALUE

After receiving your help I should be able to turn Data2 into the following:

DATE         VALUE
2001-01-20     17
2001-01-23     17
2001-02-11     21
2001-02-15     21
2001-03-18     18

As the dates fell into the week before the date in Data1, and therefore have the same value as the first value in Data1.

Hopefully what I'm trying to do is clear here. I appreciate your help!

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Can you provide more example data so its clearer how this would work? – Thomas May 28 '13 at 7:56
I added more sample data. Hopefully it's more clear now. Thanks! – inDoze May 28 '13 at 13:21

1 Answer 1

It's helpful to use the dput() function to provide sample data when asking a question. For example:

Data1 <- structure(list(DATE = structure(c(11346, 11370, 11401), class = "Date"), 
    VALUE = c(17L, 21L, 18L)), .Names = c("DATE", "VALUE"), 
    row.names = c(NA, -3L), class = "data.frame")
Data2 <- structure(list(DATE = structure(c(11342, 11345, 11364, 11368, 11399), 
    class = "Date")), .Names = "DATE", 
    row.names = c(NA, -5L), class = "data.frame")

You could use the wday() function in the lubridate package to help you define your "week" and then merge the two data sets based on this definition of week. For example:


Data1$week <- as.numeric(Data1$DATE) - wday(Data1$DATE)
Data2$week <- as.numeric(Data2$DATE) - wday(Data2$DATE)
merge(Data1, Data2, by="week", all=TRUE)

   week     DATE.x VALUE     DATE.y
1 11335       <NA>    NA 2001-01-20
2 11342 2001-01-24    17 2001-01-23
3 11363 2001-02-17    21 2001-02-11
4 11363 2001-02-17    21 2001-02-15
5 11398 2001-03-20    18 2001-03-18
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Interesting. I will give this a try later today. Thank you for your help. – inDoze May 28 '13 at 16:31
Thank you again for your help. While this didn't quite solve my problem I feel like I'm on the right track now - treating the dates as numeric was an important first step, and now I'm working on getting the appropriate conditional statements so that values will be assigned appropriately. I appreciate your time in answering my question. – inDoze May 29 '13 at 21:35

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