I have a data table (DatosMex
) in R
and would like to recode a column within it named industry
. The distinct categories for this variable are:
Agricultura,Ganaderia,Pesca,Caza Forestal
Asociaciones
Comercio
Construccion
Energia,Petroleo,Gas,Mineria
Gobierno
Industria
N/A
NULL
Servicios
I want to create a new variable, say gr_industry
, that groups some categories. For instance, my new variable must group the categories Agricultura,Ganaderia,Pesca,Caza Forestal
, Asociaciones
,Energia,Petroleo,Gas,Mineria
and Gobienro
and assign them the code 1.
How would you do this using the data.table
package syntax?
My approach was this:
#Create an id for each industry
DatosMex[,cod_industria:=as.numeric(DatosMex$industry)]
#Create a new data table
ind =data.table(cod_industria=c(1:10),gr_industry=c(1,1,2,3,1,1,4,6,6,5))
setkey(DatosMex,cod_industria)
setkey(ind,cod_industria)
DatosMex[ind]
So, as you can see, I had to create a new data table ind
and then do the inner join. My question is: is there another way of doing this using the data.table
way? I don't want to create a table each time I need to do something similar. Also, I'd like to avoid using if statements.
NULL
andNA
meaningful factor levels or do they reflect missing values?j
component of[
, egDatosMex[,cod_industria:=as.numeric(industry)]
will work.NULL
andNA
) as missing values. On the other hand, you are right, I don't need to refer to the data table within thej
component. Thank you!