[R] Seeking to Dummify Categorical Variables
David Winsemius
dwinsemius at comcast.net
Sun Apr 2 21:27:34 CEST 2017
> On Apr 2, 2017, at 12:19 PM, David Winsemius <dwinsemius at comcast.net> wrote:
>
>>
>> On Apr 2, 2017, at 11:48 AM, BR_email <br at dmstat1.com> wrote:
>>
>> Hi R'ers:
>> I need a jump start to obtain my objective.
>> Assistance is greatly appreciated.
>> Bruce
>>
>> *******
>> #Given Gender Dataset
>> r1 <- c( 1, 2, 3)
>> c1 <- c( "male", "female", "NA")
It's also important to realize that this "NA" is not actually a missing value but was rather a character string. If it had not been quoted at the time of data input , it would have been a missing value.
--
David
>> GENDER <- data.frame(r1,c1)
>> names(d1_3) <- c("ID","Gender")
>
> #ITYM:
> names(GENDER) <- c("ID","Gender")
>
>> GENDER
>> --------------
>> _OBJECTIVE_: To dummify GENDER,
>> i.e., to generate two new numeric columns,
>> Gender_male and Gender_female,
>> such that:
>> when Gender="male" then Gender_male=1 and Gender_female=0
>> when Gender="female" then Gender_male=0 and Gender_female=1
>> when Gender="NA" then Gender_male=0 and Gender_female=0
>>
>> So, with the given dataset, the resultant dataset would be as follows:
>> Desired Extended Gender Dataset
>> ID Gender Gender_male Gender_female
>> 1 male 1 0
>> 2 female 0 1
>> 3 NA 0 0
>
> With that correction I think you might want:
>
>> model.matrix( ID ~ Gender+0, data=GENDER )
> Genderfemale Gendermale GenderNA
> 1 0 1 0
> 2 1 0 0
> 3 0 0 1
> attr(,"assign")
> [1] 1 1 1
> attr(,"contrasts")
> attr(,"contrasts")$Gender
> [1] "contr.treatment"
>
> If you assigned that to an object name, say "obj" you could get your desired result with:
>
>> obj <- model.matrix( ID ~ Gender+0, data=GENDER )
>> cbind(GENDER[ , 1, drop=FALSE], obj[,-3] )
> ID Genderfemale Gendermale
> 1 1 0 1
> 2 2 1 0
> 3 3 0 0
>
>
> I get the sense that you are trying to replicate a workflow that you developed in some other language and I think it would be more efficient for you to actually learn R rather than trying to write SAS or SPSS in R. If you like getting "into the weeds" of the language then I suggest trying to read the code in the `lm` function. It might help to refer back to Venables and Ripley's "S Programming" or reading Wickham's "Advanced R" pages on the web.
>
> --
>> Bruce Ratner, Ph.D.
>>
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>> and provide commented, minimal, self-contained, reproducible code.
>
> David Winsemius
> Alameda, CA, USA
David Winsemius
Alameda, CA, USA
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