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I have trouble generating the following dummy-variables in R: I'm analyzing yearly time series data (time period 1948-2009). I have two questions: (1) how do I generate a dummy variable for observation #10, i.e. for year 1957 (value = 1 at 1957 and zero otherwise). (2) how do I generate a dummy-variable which is zero before 1957 and takes the value 1 from 1957 and onwards to 2009?

Regards

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6 Answers 6

Another option that can work better if you have many variables is factor and model.matrix.

> year.f = factor(year)
> dummies = model.matrix(~year.f)

This will include an intercept column (all ones) and one column for each of the years in your data set except one, which will be the "default" or intercept value.

You can change how the "default" is chosen by messing with contrasts.arg in model.matrix.

Also, if you want to omit the intercept, you can just drop the first column.

Hope this is useful.

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6  
+1 for model.matrix –  Luciano Selzer Aug 14 '12 at 12:56
    
Wow, what a brilliant function. Another year of faffing around with data saved. Thanks! –  Chris Beeley Jun 15 '13 at 14:58
2  
what if you want to generate dummy variables for all (instead of k-1) with no intercept? –  Fernando Hoces De La Guardia Mar 27 at 16:52
1  
@Synergist table(1:n, factor). Where factor is the original variable and n is its length –  Fernando Hoces De La Guardia Jun 3 at 15:43
1  
@Synergist that table is a n x k matrix with all k indicator variables (instead of k-1) –  Fernando Hoces De La Guardia Jun 3 at 15:49

The simplest way to produce these dummy variables is something like the following:

> print(year)
[1] 1956 1957 1957 1958 1958 1959
> dummy <- as.numeric(year == 1957)
> print(dummy)
[1] 0 1 1 0 0 0
> dummy2 <- as.numeric(year >= 1957)
> print(dummy2)
[1] 0 1 1 1 1 1

More generally, you can use ifelse to choose between two values depending on a condition. So if instead of a 0-1 dummy variable, for some reason you wanted to use, say, 4 and 7, you could use ifelse(year == 1957, 4, 7).

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Thanks a lot Martin O'Leary - I will test out your recommendation. 😊 –  Pantera Aug 2 '12 at 23:57

What I normally do to work with this kind of dummy variables is:

(1) how do I generate a dummy variable for observation #10, i.e. for year 1957 (value = 1 at 1957 and zero otherwise)

data$factor_year_1 <- factor ( with ( data, ifelse ( ( year == 1957 ), 1 , 0 ) ) )

(2) how do I generate a dummy-variable which is zero before 1957 and takes the value 1 from 1957 and onwards to 2009?

data$factor_year_2 <- factor ( with ( data, ifelse ( ( year < 1957 ), 0 , 1 ) ) )

Then, I can introduce this factor as a dummy variable in my models. For example, to see whether there is a long-term trend in a varible y :

summary ( lm ( y ~ t,  data = data ) )

Hope this helps!

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I read this on the kaggle forum:

#Generate example dataframe with character column
example <- as.data.frame(c("A", "A", "B", "F", "C", "G", "C", "D", "E", "F"))
names(example) <- "strcol"

#For every unique value in the string column, create a new 1/0 column
#This is what Factors do "under-the-hood" automatically when passed to function requiring numeric data
for(level in unique(example$strcol)){
  example[paste("dummy", level, sep = "_")] <- ifelse(example$strcol == level, 1, 0)
}
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Hi i wrote this general function to generate a dummy variable which essentially replicates the replace function in Stata.

If x is the data frame is x and i want a dummy variable called a which will take value 1 when x$b takes value c

introducedummy<-function(x,a,b,c){
   g<-c(a,b,c)
  n<-nrow(x)
  newcol<-g[1]
  p<-colnames(x)
  p2<-c(p,newcol)
  new1<-numeric(n)
  state<-x[,g[2]]
  interest<-g[3]
  for(i in 1:n){
    if(state[i]==interest){
      new1[i]=1
    }
    else{
      new1[i]=0
    }
  }
    x$added<-new1
    colnames(x)<-p2
    x
  }
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If you want to get K dummy variables, instead of K-1, try:

dummies = table(1:length(year),as.factor(year))  

Best,

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