Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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:



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:

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

(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?

share|improve this question
I considered it, but sapply(modellingDF, function(x) all(is.na(x))) returns FALSE for every column –  Steph Locke Sep 25 '13 at 10:22
Can you make a reproducible example that produces the error? You've shown the error which is good, but not what produces it, iiuc. –  Matt Dowle Sep 25 '13 at 10:33
I was just trying to add a reproducible example with some dput results for you and noticed something rather strange - when I change the columns name away from the actual column name it actually works. modellingDF[sample(1:nrow(modellingDF),200),list(IntCol=Age,IntCol2=Score,Outco‌​me,abc=LTV),key=Bracket] works, but modellingDF[sample(1:nrow(modellingDF),200),list(IntCol=Age,IntCol2=Score,Outco‌​me,LTV),key=Bracket] won't. I thought perhaps I had a variable called LTV but nope, plus data.table should take internal variables in preference –  Steph Locke Sep 25 '13 at 10:56
What is x in your example? (ie glm(x, formula = ...). Generally you need to reference .SD as the data argument for the correct environment to be used. –  mnel Sep 25 '13 at 11:04

1 Answer 1

up vote 4 down vote accepted

You need to correctly specify the data argument within glm. Inside a data.table (using [), this is referenced by .SD. (see create a formula in a data.table environment in R for related question)


modellingDF[,list(Outcome, fitted = glm(data = .SD, 
  formula = Outcome ~ IntCol ,family = binomial(link = logit))$fitted),

will work.

While in this case (simply extracting the fitted values and moving on), this approach is sound, using data.table and .SD can get in a mess of environments if you are saving the whole model and then attempting to update it (see Why is using update on a lm inside a grouped data.table losing its model data?)

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.