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What would be a good way to manipulate the following type of times series data in R:

username;variable;2012-01-01;2012-01-15;2012-02-01;2012-03-01;2012-04-01;2012-05-01;2012-07-02 
user1;var1;5;5;5;5;6;6;6
user1;var2;0;0;1;0;0;1;1
user1;var3;9;9;9;9;9;9;9
user2;var1;4;4;4;4;4;6;6
user2;var2;0;0;1;1;1;1;1
user2;var3;4;4;4;9;9;9;9

The data contains a set of time series for each monitored user. My goal is to have the data in such a format that I can easily make queries upon this data set for "deltas". That is, from a certain point in time I can look back and compute how long ago a certain variable changed and also get the original value and the new value from this query.

A function that would simply take a date and variable name as an argument would be perfect, e.g, fun(2012-07-02, var1), fun(2012-02-17, var1) or fun(2014-09-02, var1) would return four columns: username,original_value;new_value;days_since_change.

Are there R packages or pieces of code that would be able to do something similar?

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How would date1-7 map to 2012-07-02? –  Joshua Ulrich Jul 2 '12 at 12:24
    
Poor example, date1-7 are actually dates in format yyyy-mm-dd. I'll correct it. –  Joshua Jul 2 '12 at 12:29
    
Not sure about your answer, but I think package data.table might be very helpful. –  Wayne Jul 2 '12 at 12:59
    
So in your example fun, --I edited to make the last date July -- since July2012 is out of range, would your output be user1,5,5,4 and user2,4,6,3 ? –  Carl Witthoft Jul 2 '12 at 13:45
    
The function would return the result for all users. For user1 user1;5;6;92 and for user2 user2;4;6;62. that is, what the change in value was, and how many days has passed sine this change. So now date specified in the function is out of range. –  Joshua Jul 2 '12 at 16:50

1 Answer 1

Here's how to transform your table in a easy to work with format. the trick to to use the reshape2 package and melt your data.

my.table <-read.table(text="username;variable;2012-01-01;2012-01-15;2012-02-01;2012-03-01;2012-04-01;2012-05-01;2012-07-02
user1;var1;5;5;5;5;6;6;6
user1;var2;0;0;1;0;0;1;1
user1;var3;9;9;9;9;9;9;9
user2;var1;4;4;4;4;4;6;6
user2;var2;0;0;1;1;1;1;1
user2;var3;4;4;4;9;9;9;9",sep=";", header=TRUE)

library(reshape2)
res <-melt(my.table,id.vars=c("username","variable") )    #melt on the first two columns
colnames(res)[3] <-"Date"
res$Date <-as.Date(res$Date,format="X%Y.%m.%d")           #transform into date format

out <-res[res$username=="user1" & res$variable=="var1",]  #request user1 and var1
out

   username variable       Date value
1     user1     var1 2012-01-01     5
7     user1     var1 2012-01-15     5
13    user1     var1 2012-02-01     5
19    user1     var1 2012-03-01     5
25    user1     var1 2012-04-01     6
31    user1     var1 2012-05-01     6
37    user1     var1 2012-07-02     6

I do not understand what you want when you say original_value;new_value;days_since_change but with data extracted in such a way, I'm sure you can figure it out.

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Thank you. I added a comment and edited my original post where I explain my fun() output a bit more closely. Melt could be a good solution, but I'm a bit wary about the size of the table: there are millions of users, some hundreds of dates and around ten variables. –  Joshua Jul 3 '12 at 7:41

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