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I need to apply some econometric methodology, and I have to consider a continuous variable among my regressors. The problem is that I just have discrete variables.

Could someone tell me how I can add small random error (residual) with mean 0 to a discrete variable (one column in my data base), and save it in my data base? I'm still a R beginner.

Example: I have

mA <- data.frame(Asexo=c(1, 0, 0, 1, 0))

and I want to add a small error to mA$Asexo so that it became a continuous variable:

mA <- data.frame(Asexocontiuous=c(1.03, 0.34, 0.18, 0, 1.5))
share|improve this question
Please be more specific. What form are your discrete data in -- are they integers or categorical (factors in R)? Why do you "have to use a continuous variable"? Are you using a methodology that doesn't allow repeated points? I think ?jitter and ?rnorm (and the Introduction to R) would be good starting points. – Ben Bolker May 26 '11 at 22:23
Dear ben,I have just dummy variables because im workinh with microdata from studente – André Moraes May 26 '11 at 22:41
This still doesn't explain what you want to do. What is the problem you are trying to solve? Can you give a simplified example of what an acceptable solution to your problem would look like? – Ben Bolker May 26 '11 at 22:47
sorry...the text was cuted...the right one... – André Moraes May 26 '11 at 22:50
The metodology(linked with quantilic regression) asks for at least 1 continuous variable to have a unique and well defined solution .I meant to use a aleatory error so i can make a continuons you have any idea how to do it?thanks !! – André Moraes May 26 '11 at 22:50
up vote 3 down vote accepted

If you want to 'jitter' a 0/1 variable in order to make sure there are no duplicates (or to use a method that requires continuous variables), the simplest approach is

mydat$sexcont <- rnorm(nrow(mydat),mean=mydat$sexbinary,sd=csd)

where csd is your chosen standard deviation. A little more elegantly,

mydat <- transform(mydat,sexcont=rnorm(nrow(mydat),mean=sexbinary,sd=csd))

If sexbinary is a factor then use as.numeric(sexbinary) (or as.numeric(sexbinary)-1 if you need it to be a 0/1 rather than a 1/2 variable)

You can also see ?jitter, although that is more commonly used in the context of avoiding point overlaps in graphics.

share|improve this answer
thanks did it!!!!!!!thanks again!!!!i own you one!!!! – André Moraes May 26 '11 at 23:27
if I answered your question satisfactorily, you should click to accept the answer ... – Ben Bolker May 26 '11 at 23:29
sorry....there you are!!!!thanks again!!!! – André Moraes May 26 '11 at 23:32

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