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I have the following columns in my data set:

presult     aresult
  I         single
  I         double
  I         triple
  I         home run
  SS        strikeout

I would like to add a third column "bases" that is dependent upon the value of the result in column aresult.

For example, I would like bases to be 1 for a single, 2 for a double, 3 for a triple, 4 for a home run, and 0 for a strikeout.

Usually I would create the new variable like this:

dataset$base<-ifelse(dataset$aresult=="single", 1, 0)

The problem is that I don't know how to code the new variable in without setting all other variables to zero.

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4 Answers 4

up vote 8 down vote accepted

define your lookup table

lookup= data.frame( 
        aresult=c("strikeout","single","double","triple","home run"))

then use join from plyr

dataset = join(dataset,lookup,by='aresult')
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a bit more verbose than the solution from Dieter but with this you have the flexibility to define the mapping aresult-> base. –  LouisChiffre Dec 8 '11 at 15:54

Here is how to use a named vector for the lookup:

Define test data:

dat <- data.frame(
    presult = c(rep("I", 4), "SS", "ZZ"),
    aresult = c("single", "double", "triple", "home run", "strikeout", "home run"),

Define a named numeric vector with the scores:

score <- c(single=1, double=2, triple=3, `home run`=4,  strikeout=0)

Use vector indexing to match the scores against results:

dat$base <- score[dat$aresult]
  presult   aresult base
1       I    single    1
2       I    double    2
3       I    triple    3
4       I  home run    4
5      SS strikeout    0
6      ZZ  home run    4

Additional information:

If you don't wish to construct the named vector by hand, say in the case where you have large amounts of data, then do it as follows:

scores <- c(1:4, 5)
names(scores) <- c("single", "double", "triple", "home run", "strikeout")

(Or read the values and names from existing data. The point is to construct a numeric vector and then assign names.)

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nice trick to use a named vector. I have learned something here. –  LouisChiffre Dec 8 '11 at 16:05
+1 Great idea to use a named vector. Wish I'd seen/thought of this years ago! –  Josh O'Brien Dec 8 '11 at 16:31
@Andrie. Is there a way to do this without having to specify the rows. I have a dataset with thousands of rows. –  Burton Guster Dec 8 '11 at 16:45
@BurtonGuster I've added additional information. I hope that helps. –  Andrie Dec 8 '11 at 16:54

An alternative to Dieter's answer:

dat <- data.frame(
  presult = c(rep("I", 4), "SS", "ZZ"),
  aresult = c("single", "double", "triple", "home run", "strikeout", "home run"),

dat$base <- as.integer(factor(dat$aresult,
  levels=c("strikeout","single","double","triple","home run")))-1
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 dataset$base <- as.integer(as.factor(dataset$aresult))

Depending on your data as.factor() could be omitted, because in many cases strings are factor by default, e.g. with read.table

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How can I specify what value each result takes? –  Burton Guster Dec 8 '11 at 15:52
Nice approach, but for this to work, "strikeout" needs to be first in the list, and then you have to subtract 1. –  Andrie Dec 8 '11 at 15:54
@burton my solution allows you to do that –  LouisChiffre Dec 8 '11 at 15:55
@Andrie: or use factor instead of as.factor and specify the levels/labels however you want. –  Joshua Ulrich Dec 8 '11 at 16:06

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