I'm trying to do some glm's inside a data.table to produce modelled results split by key factors.
I've been doing this sucessfully for:
High level glm
glm(modellingDF,formula=Outcome~IntCol + DecCol,family=binomial(link=logit))
Scoped glm with single columns
modellingDF[,list(Outcome, fitted=glm(x,formula=Outcome~IntCol ,family=binomial(link=logit))$fitted ), by=variable]
Scoped glm with two integer columns
modellingDF[,list(Outcome, fitted=glm(x,formula=Outcome~IntCol + IntCol2 ,family=binomial(link=logit))$fitted ), by=variable]
But, when I try and do the high level glm inside the scope with my decimal column, it produces this error
Error in model.frame.default(formula = Outcome ~ IntCol + DecCol, data = x, : variable lengths differ (found for 'DecCol')
I thought perhaps it was due to variable lengths of the partitions, so I tested with a reproducible example:
library("data.table") testing<-data.table(letters=sample(rep(LETTERS,5000),5000), letters2=sample(rep(LETTERS[1:5],10000),5000), cont.var=rnorm(5000), cont.var2=round(rnorm(5000)*1000,0), outcome=rbinom(5000,1,0.8) ,key="letters") testing.glm<-testing[,list(outcome, fitted=glm(x,formula=outcome~cont.var+cont.var2,family=binomial(link=logit))$fitted) ),by=list(letters)]
But this did not have the error. I thought maybe it was due to NAs or something but a summary of the data.table modellingDF gives no indication that there should be any issues:
DecCol Min. :0.0416 1st Qu.:0.6122 Median :0.7220 Mean :0.6794 3rd Qu.:0.7840 Max. :0.9495 nrow(modellingDF[is.na(DecCol),]) # results in 0 modellingDF[,list(len=.N,DecCollen=length(DecCol),IntCollen=length (IntCol ),Outcomelen=length(Outcome)),by=Bracket] Bracket len DecCollen IntCollen Outcomelen 1: 3-6 39184 39184 39184 39184 2: 1-2 19909 19909 19909 19909 3: 0 9912 9912 9912 9912
Perhaps I'm having a dozy day, but could anyone suggest a solution or a means for digging into this issue further?