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I'm looking to collapse a table with columns that look like this (with a sample row shown):

ID DateRange1Start DateRange1End Value1 DateRange2Start DateRange2End Value2 DateRange3Start DateRange3End Value3
1 1/1/90 3/1/90 4.4 4/5/91 6/7/91 6.2 5/5/95 6/6/96 3.3 

Such that the DateRangeXStart and DateRangeXEnd columns are grouped, so now what was 1 row in the original table becomes 3 rows in the new table.

ID DateRangeStart DateRangeEnd Value
1 1/1/90 3/1/90 4.4
1 4/5/91 6/7/91 6.2
1 5/5/95 6/6/96 3.3

I know there must be a way to do this with reshape2/melt/recast, but I can't seem to figure it out how to map the multiple sets of multiple columns into single columns in this particular way.

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3 Answers 3

up vote 4 down vote accepted
reshape(dat, idvar="ID", direction="long", 
             varying=list(Start=c(2,5,8), End=c(3,6,9), Value=c(4,7,10)),
             v.names = c("DateRangeStart", "DateRangeEnd", "Value") )
#-------------
    ID time DateRangeStart DateRangeEnd Value
1.1  1    1          1/1/90        3/1/90    4.4
1.2  1    2          4/5/91        6/7/91    6.2
1.3  1    3          5/5/95        6/6/96    3.3

(Added the v.names per Josh's suggestion.)

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3  
+1 for showing off the power of that varying= argument. Following up, the v.names argument can also pretty up those column names, like this: v.names = c("DateRangeStart", "DateRangeEnd", "Value") –  Josh O'Brien Sep 17 '12 at 20:35

Here is an approach to the problem using tidyr. This is an interesting use case for its function extract_numeric(), which I used to pull out the group from the column names

library(dplyr)
library(tidyr)

a <- read.table(textConnection("
ID DateRange1Start DateRange1End Value1 DateRange2Start DateRange2End Value2 DateRange3Start DateRange3End Value3
1 1/1/90 3/1/90 4.4 4/5/91 6/7/91 6.2 5/5/95 6/6/96 3.3 
"),header=TRUE)

a %>%
  gather(variable,value,-ID) %>%
  mutate(group = extract_numeric(variable)) %>%
  mutate(variable =  gsub("\\d","",x = variable)) %>%
  spread(variable,value)

  ID group DateRangeEnd DateRangeStart Value
1  1     1       3/1/90         1/1/90   4.4
2  1     2       6/7/91         4/5/91   6.2
3  1     3       6/6/96         5/5/95   3.3
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You don't need anything fancy; base R functions will do.

a <- read.table(textConnection("
ID DateRange1Start DateRange1End Value1 DateRange2Start DateRange2End Value2 DateRange3Start DateRange3End Value3
1 1/1/90 3/1/90 4.4 4/5/91 6/7/91 6.2 5/5/95 6/6/96 3.3 
"),header=TRUE)
b1 <- a[,c(1:4)]; b2 <- a[,c(1,5:7)]; b3 <- a[,c(1,8:10)]
colnames(b1) <- colnames(b2) <- colnames(b3) <- c("ID","DateRangeStart","DateRangeEnd","Value")
b <- rbind(b1,b2,b3)
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