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I've got a dataframe that looks like

MAP  name       series    ID
1.0  aspartame  baseline  902349
1.0  aspartame  baseline  82749
1.0  aspartame  baseline  928542
1.0  aspartame  next      928542
0.8  aspartame  next      82749
0.8  aspartame  next      902349

And I'd like to join this data on ID and calculate the difference between baseline and next in the MAP score. so this should give

diff name       ID
0.2  aspartame  902349
0.2  aspartame  82749
0.0  aspartame  928542
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3 Answers 3

up vote 2 down vote accepted

As requested by OP: A solution using reshape (or rather reshape2).

d <- read.table(text = "
MAP  name       series    ID
1.0  aspartame  baseline  902349
1.0  aspartame  baseline  82749
1.0  aspartame  baseline  928542
1.0  aspartame  next      928542
0.8  aspartame  next      82749
0.8  aspartame  next      902349", header = TRUE)

require(reshape2)

dcast(data = d, formula = ID  + name~ ., value.var = "MAP", 
      fun.aggregate = function(x) (x[1] - x[2]))

gives

      ID      name  NA
1  82749 aspartame 0.2
2 902349 aspartame 0.2
3 928542 aspartame 0.0
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Here is a way in base R (assuming your data.frame is named df):

aggregate(list(MAP = df$MAP), 
          by=list(ID = df$ID, name = df$name), 
          function(x) x[1] - x[2])
#       ID      name MAP
# 1  82749 aspartame 0.2
# 2 902349 aspartame 0.2
# 3 928542 aspartame 0.0
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You could use plyr:

library(plyr)
ddply(your_data, c("ID", "name"), 
      function(df){subset(df, series == "baseline", select = "MAP")-  
        subset(df, series == "next", select = "MAP")})
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